{"id":508,"date":"2023-03-16T10:37:50","date_gmt":"2023-03-16T10:37:50","guid":{"rendered":"https:\/\/globealley.us\/blogs\/?p=508"},"modified":"2023-09-18T19:01:04","modified_gmt":"2023-09-18T19:01:04","slug":"image-recognition-term-explanation-in-the-ai","status":"publish","type":"post","link":"https:\/\/proqubix.com\/blogs\/image-recognition-term-explanation-in-the-ai\/","title":{"rendered":"Image Recognition Term Explanation in the AI Glossary"},"content":{"rendered":"<body><p><\/p>\n<p><img decoding=\"async\" class=\"wp-post-image\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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\" width=\"309px\" alt=\"artificial intelligence image recognition\" loading=\"lazy\"><\/p>\n\n<p>The VGG network [39] was introduced by the researchers at Visual Graphics Group at Oxford. GoogleNet [40] is a class of architecture designed by researchers at Google. ResNet (Residual Networks) [41] is one of the giant architectures that truly define how deep a deep learning architecture can be. ResNeXt [42] is said to be the current state-of-the-art technique for object recognition.<\/p>\n\n<div itemscope itemprop=\"mainEntity\" itemtype=\"https:\/\/schema.org\/Question\">\n<div itemprop=\"name\">\n<h2>What language is used for image recognition?<\/h2>\n<\/div>\n<div itemscope itemprop=\"acceptedAnswer\" itemtype=\"https:\/\/schema.org\/Answer\">\n<div itemprop=\"text\">\n<p>C++ is considered to be the fastest programming language, which is highly important for faster execution of heavy AI algorithms. A popular machine learning library TensorFlow is written in low-level C\/C++ and is used for real-time image recognition systems.<\/p>\n<\/div><\/div>\n<\/div>\n<p>You don\u2019t need high-speed internet for this as it is directly downloaded into google cloud from the Kaggle cloud. Here is an example of an image in our test set that has been convoluted with four different filters and hence we get four different images. In the coming sections, by following these simple steps we will make a classifier that can recognise RGB images of 10 different kinds of animals. An alternative way is to add vector description of the images, which will help to programme the machine to bypass the image along the trajectories specified by the vectors.<\/p>\n\n<h2>Industries that have been disrupted by AI image recognition<\/h2>\n\n<p>At the end of the process, it is the superposition of all layers that makes a prediction possible. Image recognition is used in security systems for surveillance and monitoring purposes. It can detect and track objects, people or suspicious activity in real-time, enhancing security measures in public spaces, corporate buildings and airports in an effort to prevent incidents from happening. To understand how image recognition works, it\u2019s important to first define digital images. If you still have reservations about the importance of image recognition, we suggest you try these image recognition use cases yourself.<\/p>\n\n<div itemscope itemprop=\"mainEntity\" itemtype=\"https:\/\/schema.org\/Question\">\n<div itemprop=\"name\">\n<h2>How does an AI recognize objects in an image?<\/h2>\n<\/div>\n<div itemscope itemprop=\"acceptedAnswer\" itemtype=\"https:\/\/schema.org\/Answer\">\n<div itemprop=\"text\">\n<p>Object detection is a computer vision technique that works to identify and locate objects within an image or video. Specifically, object detection draws bounding boxes around these detected objects, which allow us to locate where said objects are in (or how they move through) a given scene.<\/p>\n<\/div><\/div>\n<\/div>\n<p>At its most basic level, Image Recognition could be described as mimicry of human vision. Our vision capabilities have evolved to quickly assimilate, contextualize, and react to what we are seeing. However, despite early optimism, AI proved an elusive technology that serially failed to live up to expectations. MarTech Series (MTS) is a business publication dedicated to helping marketers get more from marketing technology through in-depth journalism, expert  author blogs and research reports.<\/p>\n\n<h2>Image Recognition vs. Computer Vision<\/h2>\n\n<p>But only in the 2010s have researchers managed to achieve high accuracy in solving image recognition tasks with deep convolutional neural networks. They started to train and deploy CNNs using graphics processing units (GPUs) that significantly accelerate complex neural network-based systems. The amount of training data \u2013 photos or videos \u2013 also increased because mobile phone cameras and digital <a href=\"https:\/\/metadialog.com\/\" target=\"_blank\" rel=\"noopener\">metadialog.com<\/a> cameras started developing fast and became affordable. The accuracy of the results depends on the amount and quality of the data, as well as the complexity of the algorithms the software is using. Image recognition, powered by AI, has become an invaluable technology with numerous applications across industries. It enables machines to understand and interpret visual data, mimicking human vision.<\/p>\n\n<div style=\"border: black solid 1px;padding: 10px;\">\n<h3>6 Artists Who Were Using Artificial Intelligence Before ChatGPT \u2013 Artsy<\/h3>\n<p>6 Artists Who Were Using Artificial Intelligence Before ChatGPT.<\/p>\n<p>Posted: Mon, 05 Jun 2023 18:49:00 GMT [<a href=\"https:\/\/news.google.com\/rss\/articles\/CBMiV2h0dHBzOi8vd3d3LmFydHN5Lm5ldC9hcnRpY2xlL2FydHN5LWVkaXRvcmlhbC02LWFydGlzdHMtYXJ0aWZpY2lhbC1pbnRlbGxpZ2VuY2UtY2hhdGdwdNIBAA?oc=5\" rel=\"nofollow noopener\" target=\"_blank\">source<\/a>]<\/p>\n<\/div>\n<p>For example, if you are an owner of an e-commerce business, you will benefit more from object identification and detection capabilities of the software than its facial recognition capabilities. Content moderation is another area that some businesses may need to consider carefully. Convolutional Neural Networks (CNNs) enable deep image recognition by using a process called convolution. Computer vision trains machines to perform these functions, but it has to do it in much less time with cameras, data and algorithms rather than retinas, optic nerves and a visual cortex. Because a system trained to inspect products or watch a production asset can analyze thousands of products or processes a minute, noticing imperceptible defects or issues, it can quickly surpass human capabilities.<\/p>\n\n<h2>What\u2019s the difference between Object Recognition and Image Recognition?<\/h2>\n\n<p>Thus, the system cannot understand the image alignment changes, which creates a large image recognition problem. AI-based face recognition opens the door to another coveted technology\u00a0\u2014 emotion recognition. A specific arrangement of facial features helps the system estimate what emotional state the person is in with a high degree of accuracy. Industries that depend heavily on engagement (such as entertainment, education, healthcare, and marketing) keep finding new ways to leverage solutions that let them gather and process this all-important feedback. Machine learning example with image recognition to classify digits using HOG features and an\u00a0SVM classifier. Data scientists and computer vision specialists prefer Python as the preferred programming language for image recognition.<\/p>\n\n<ul>\n<li>The simple approach which we are taking is to look at each pixel individually.<\/li>\n<li>Image classification, however, is more suitable for tasks that involve sorting images into categories, like organizing photos, diagnosing medical conditions from images, or analyzing satellite images.<\/li>\n<li>One of the major areas of development is the integration of image recognition technology with artificial intelligence and machine learning.<\/li>\n<li>Imagga Technologies is a pioneer and a global innovator in the image recognition as a service space.<\/li>\n<li>There is a lot of excitement about how AI and machine learning are changing the conversation in businesses today and how they will affect nearly every industry in the future years.<\/li>\n<li>This means multiplying with a small or negative number and adding the result to the horse-score.<\/li>\n<\/ul>\n<p>Object recognition algorithms are designed to recognize specific types <a href=\"https:\/\/www.metadialog.com\/blog\/ai-in-image-recognition\/\" target=\"_blank\" rel=\"noopener\">of objects, such<\/a> as cars, people, animals, or products. The algorithms use deep learning and neural networks to learn patterns and features in the images that correspond to specific types of objects. In addition, standardized image datasets have lead to the creation of computer vision high score lists and competitions.<\/p>\n\n<h2>How does image recognition work with machines?<\/h2>\n\n<p>In fact, it\u2019s estimated that there have been over 50B images uploaded to Instagram since its launch. In the first step of AI image recognition, a large number of characteristics (called features) are extracted from an image. An image consists of pixels that are each assigned a number or a set that describes its color depth. In many administrative processes, there are still large efficiency gains to be made by automating the processing of orders, purchase orders, mails and forms. A number of AI techniques, including image recognition, can be combined for this purpose.<\/p>\n<p><a href=\"https:\/\/metadialog.com\/\" target=\"_blank\" rel=\"noopener\"><img decoding=\"async\" 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\" alt=\"https:\/\/metadialog.com\/\" class=\"aligncenter\" style=\"display:block;margin-left:auto;margin-right:auto; width=\" 407px' loading=\"lazy\"><\/a><\/p>\n\n<p>Machine learning involves taking data, running it through algorithms, and then making predictions. Here I am going to use deep learning, more specifically convolutional neural networks that can recognise RGB images of ten different kinds of animals. The corresponding smaller sections are normalized, and an activation function is applied to them. Rectified Linear Units (ReLu) are seen as the best fit for image recognition tasks. The matrix size is decreased to help the machine learning model better extract features by using pooling layers. Depending on the labels\/classes in the image classification problem, the output layer predicts which class the input image belongs to.<\/p>\n\n<h2>How AI and Machine Learning Transform Banking<\/h2>\n\n<p>The key idea behind convolution is that the network can learn to identify a specific feature, such as an edge or texture, in an image by repeatedly applying a set of filters to the image. These filters are small matrices that are designed to detect specific patterns in the image, such as horizontal or vertical edges. The feature map is then passed to \u201cpooling layers\u201d, which summarize the presence of features in  the feature map. Ready to start building sophisticated, highly accurate image recognition and object recognition AI models?<\/p>\n\n<div style=\"border: black dashed 1px;padding: 10px;\">\n<h3>AI and ML: What They are and How They Work Together? \u2013 Analytics Insight<\/h3>\n<p>AI and ML: What They are and How They Work Together?.<\/p>\n<p>Posted: Fri, 09 Jun 2023 07:52:30 GMT [<a href=\"https:\/\/news.google.com\/rss\/articles\/CBMiVGh0dHBzOi8vd3d3LmFuYWx5dGljc2luc2lnaHQubmV0L2FpLWFuZC1tbC13aGF0LXRoZXktYXJlLWFuZC1ob3ctdGhleS13b3JrLXRvZ2V0aGVyL9IBAA?oc=5\" rel=\"nofollow noopener\" target=\"_blank\">source<\/a>]<\/p>\n<\/div>\n<p>Microsoft Azure Computer Vision API provides a comprehensive set of image recognition capabilities. It offers features like image tagging, object detection, text recognition, facial analysis, and adult content detection. The API allows developers to extract valuable insights from images and enhance their applications with image recognition functionalities. Founded in 2011, Blippar is a technology company that specializes in augmented reality, artificial intelligence and computer vision. In 2014, the company implemented first-ever image recognition technology that can quickly recognize images, and even faces of people on Google Glass.<\/p>\n\n<h2>Image recognition helps you catch catfish accounts<\/h2>\n\n<p>An introduction tutorial is even available on Google on that specific topic. \u201cIt\u2019s visibility into a really granular set of data that you would otherwise not have access to,\u201d Wrona said. TS2 SPACE provides telecommunications services by using the global satellite constellations. We offer you all possibilities of using satellites to send data and voice, as well as appropriate data encryption. Solutions provided by TS2 SPACE work where traditional communication is difficult or impossible. See how our architects and other customers deploy a wide range of workloads, from enterprise apps to HPC, from microservices to data lakes.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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OSMKM68Z1v8K47xPcjxRwW2f5KMfbm\/wAK4xU+8jbU7rK8O43wsxOzFOmKwyy\/KrW26ly6cqkpQo6kW4OJN\/H1G37bxnhZxLZNdk2y64ppCXHQlRUkgEWOulx5RGPVtnuDq5NLnqpRG3n3QpK171xJWFWuDlULjmjjw1ta5j8ubOcFPKSt2gMqUlaHAStd8ySsjp\/+RenTfXgI3dTD0P2jaBhBU9PU5dbYafpq93Mh26A2q5GpOn7KvuBPCMl7GGFZdZaexBIIWAlRSX03soAp8oII6xrGDUNm2C6o+\/Mz1G3rkyta3CZh2xUo3VYBVhc6kCwvaMVnZPgZMshiao4mVhJSp1bikqWSsrucpAGqjaw0FgNABD7Q+yTnsScC63OKbWChcpmBB0POTY\/5xMsQxsQbQ1W5ppsWSiTypF72AUmJnjHW77NlHuIr\/tRJOPKjc3s2wB\/2RGOOMQYgw9JtTdBoaqnzXlPtobUtaQlslJSE8efluOJF7a2iTtqHy9qX+Bj8AiJcW4UxVVKiuqYaxSqmumXDCW13W1cJcsvL0KClIseBGYEHm21QvgrGWffdzWt7TMTuvNy6dnNRSt10NAuFYSm\/BSiEGwB48bR9Z2kYpmJ1iTVs+nZZLsy2yt50rUhKC4kLVzUXFklRudNOPQcRzCu0p2oy0jNV55cs6\/LPvzUvMbtLbbYG8at3alKKE2VbTr5yo9pbBm06WSW0Y3RYuuuHMtSiVKdKwrVGgCCUZOGua9wBC7I6EkRYbZ6SrBdIJJJ5MmK5ybLktKMS7ry3lttpQpxZupZA1JPWYsXs8+RVI+ziKtRsi3T7sysZkpwjWlJNiKfMWP8A9ZitzfcJ8QiyGNPkhW\/+XzH+mYrW4hTsqptCsqltlIPUSOMNP4nWo8DlMXYtxPhyed+LsJv1aSTLpWgy6VFwvc8lBt0FKRZQBsdCDmEYJ2kYgMuVt4BqCXkXUtDgcCQnc7y4KW1XuboAHTxtwjXt4A2kyzZk2sboelUpbSnO66h0hDaRZSgDckpsVcbC\/FShGSvCW1ctvo7PmVLU06iXWEZN0pQGVagEELscwsbACx1Ii67KOh1WEa5UsQU5yfqdIdpq96EoYdSQoJ3aFXN+POUoXHVHe7PiRjKl2\/fj+RiKKHhfHNKrDDk1ipE7TW33lqbdUrOGlDmo4WUQdcyj06AWiV9n\/wAsaX\/HH8jET7jEe+iw8IQjAegIQjRVfHWD6DOGn1jEUjKzKUhSmVujOkHhcDhfwxzKcYK8nZDc3sI5Xtp7PO+6n+c\/8Q7aezzvup\/nP\/EVes0PfXmibM6qEcr209nnfdT\/ADn\/AIj6nals8UoJ7L6aLm11O5R95OgifWaL++vNCzOpiONudbelcD1OiU6XTMTk3KLccBNksS6SM7ivwpHST4DHc1qrytEpj1TmcykNgBKEaqcWTZKEjpKiQB445SoYLqNawdXGZ8tprmIJch5WbMlnTmMpPzUcPCSo9MTVvJOEdymreScI7lMMQU6SqFOdVOSqpgMNrcQ2HFpCyBfKcpGYGw0MRxPuYRllrcThGcnWRJMvBIdeLW87iyRYm4CsoPRawA4xZY7B9rAJAoUgbdPLj7EfO0PtY+oZD04+xHgw0uoh0xfmeFDTaiH3X5lepl6lNMCTRgFZl5a8uxZ1dyjfJ00FwCUJVe5tbp1jIw5ScKT1Vcp\/YpyB9lCypQmnSq6SlCh0XSc2hvzgNQIn3tD7WPqGQ9OPsR5I+D7tPbfcmm8MUtLzoAccTN2UsDhc7u5ifVtRa2D8\/mder6i1sX5n3Y7JTk\/jNqWkTdzcOKLe9Le9SBct5xqm40vFpsPVKlPsfFsjK8gelEgOSK0hC2R4hoR1KFweuId2K7Jsa4Wxca7iWUlZVhmXWhCWny4palafNFha8TTV6HKVZKXFqXLzTIO4mmTldaPgPSOtJuD1R6ugpTpUcZqzPR0VGdGn1XUizb8vDxmKTL1GRmXpxaHVocZmCzkbBTcG3G5I8hiI+T4a+gVP1kuO523LrIxFS5WsNNKUzJu7uZa0S+krTqU8UqFtRw108EBVTaJVqLVJmXncMzLkol5bTDyEWSvKoC+YFXHUapTzigC4JI2eJj1VWbrNRS\/2l\/0kTk+GvoFT9ZLhyfDX0Cp+slxGqNrRcSXG8LThbS6lpZ3n9WVJC0pUMui7HKU9C7JvrePidrSnE3RhedCg2l0puVH+tyFPDikd0b2BNhm1iCjKtwvJEl8nw19AqfrJcWL2PuUtzA8qKTJOSraHHErQ46XVFYOqsx1N9DFSsNYrfxA+ULorsq1ZzI8XMyXC2pIURoOYc4KFftAE2HTanYd8hkfanf8AaJRr0FSbquMktuF\/wkA2sb8IrLXkYdnqzPTMhJzzDC5hzIlM4pIPOPOCRom\/G3hizSu5Piip9SqMpSpZ+fnnC2y26QSElRupeUAAXJJJA0640UEm3c9Cu2krHvyKk\/NqPpy4cipPzaj6cuOPreJpCoIl5uiYko7W5LzUw3Oz3JijNmauUlJOZK0kZVAXIIvHNKdxNmSZHa5QlpC5krSubbNi4SlhIsngCMtuu51ItGiy+mZ039IlXkVJ+bUfTlxsKAzQJatyL85KT77KJhsqSqeUQOcOcRwVbjbptEfYLqyJCnL7Jcc0ypTLrhCHG5tBaCUIuUoJAuQAoqOp647OkzcrPqlZyRmWphh5SVNutLC0LF+II0Ig4pr5hSafyLTi1hbhHH7V3aY3hB5FTlHJhLrqG2ktultQc1IVmGosAT4eHTHYJ7keKOC2z\/JRj7c3+FcYoK8kjbN2i2QnyCjfMqfrBcOQUb5lT9YLjXYlp87VaBP06nPJamZhhTbS1LUgBRGl1JBIHhAJiN1S+LqPWH6a\/jiUkpZv9cZZx1xttoPOKLTSZhxsggEEJPFWUpygcNril+5iUm\/2JZ5BRvmVP1guHIKN8yp+sFxFIRidDqHDtQoa2OTM7pIn0IUvMlKM4VkICS4m4sDm4dJt32FqZXaXIlmv1k1KYVkUp0gABWUZrAAWTfUCCin+4cmv2Jp2IporExUmJWVmUTZQhRdemC7nbudBfubE\/feJZiGtiv8Ax+d+yH8aYmWMlVWm0a6TvBMgva8mgzWLltKlZwTLTDe\/dZmlNBRIuBYdQtr4Y4nkFG+ZU\/WC46rah8val\/gY\/AIgfEvLKPiqsPzWMmaY1OMCdZ\/XneNMhDLOiNybDfWOiz3Xc6mNEIpQTM85NyZJ3IKN8yp+sFw5BRvmVP1guIjamsUKqUtIzO1mi5ZiabaAZmgXFAqVmQk5cpWvdrAH7JTZPG0fmaNaYf5m12kp5QhC5d96fSsDdpIWSgJCSN9c5sw7nJbXTqy+mc3f4eRLwkKMDfdVNVuj4xWL\/wCUWRwcuRXhalqpjCmZYyyN22pWYpFuBPT44q5hmVrElRJaWr8+3OTyc5deRqkgqJSAbAmySkXIubXizOzz5FUj7OIqrxSSLaEm20batOyTFHnnqinNKNy7inxa92wk5hbxXisjkpQnVl1qWqbKFm6WxUVnKOrhFjsafJCt\/wDL5j\/TMVtzpbZ3izZKU5ieoARFCKd7k121ax+uQUb5lT9YLhyCjfMqfrBcRjiyqN1ZxdewxtNp1KS\/JtpaTMO\/q1cwrQ6lJ6RvW9QCLKIULhNvw+MZBhLL202iNFSVuMqE6lJXlYIKSSjuUuJKioXNr3ta0XWX0ym7+kSjyCjfMqfrBcdVsxaoUrjKRKpOdccWVJaW7OqWlteU2OU6HpHgvET4CqbKZAS1TxdTapPzzxca3E0FFYS2hJCAbEi6SrQcDfpiUdn\/AMsaX\/HH8jETisWxCTySLDwhCMRuEU92uEnaZiEk3PKk\/wCmiLhRTza3\/wCpeIftQ\/00R83\/ABR\/SR\/9L8mW0e8RPibGU5QKoZBujuTTZl2XkOICjqXFBwGwsLISSOs2Ea9G08zLLT0lQHnbhS1p3ouUJz3UjTnDmaHQE3Ebevy2MVvzxw68w1v5eXSw646P1S0uKLnMKSOchQ114cI1qaZtQeM3v8QS0vc3ltyltQ4jQ5mjpYG3E66k9HyVONFwTklf\/L\/K311L3e56J2iFC5ZExQJtAmpjcNruADZRSSR0G40HT4I7LjxjhahLbS5NSXZWooeS7OKG5aS2d2zYlOqmyePdXPC1iI7qKK8YJJwt\/p3CLX4BafxXI0etT7R+LqVKtNyCF8XpgICVzBHUNUp\/6j1RIMcHsyn5qmUml4YqqgQ5INTNNfP\/ALzWUFTZ\/vIJ+9JB6DHeR+p0u7d7+J59Pbrv4iEIRaWCEIQAhCEAQP8ACLcbla1RZuacQyyZZ5veOKCU5syDa56bA+SIj+OaP9ayfn0\/nE4besQVGSnqTSZR0NsuNPPuWSLqUCkJ14gC54dcRT8d1P6WuOWeHrVS7Z5N36eC4\/yc\/KzuHJFtTUlN02XQpRWpLTjaQVHibDpPXHt8c0f61k\/Pp\/ON18d1P6WuHx3U\/pa4GS1Hl+S\/U0vxzR\/rWT8+n84slsMIXgJl5GqHZh1SFdCk3Go6x4Ygf47qf0tcWE2QVSdq2CZd2ed3rjLrjIXlAJSDpe3UDa\/g1iUb\/R6p9q8G728f3O1V3J8UVExE3QJtM5h\/EMxKpAfIfl3nkpN0uZgCCeFwPAR4DFuybAnqitNVr1Rq1Smp+ae57ryyAkZQlOY2SLdQsL8T0xooXu7Ho17WVyJpvZ7s7UkmlVhinrs4hJRO5kttuJKFpQnMMoKCEgcAAABGU7gXZi6WiZ1lO5ZbYRkqNrJShKPncSlCQTx0uLHWJE5bM\/vVeUw5bM\/vVeUxotLhGe8eWR0jAezBLe6VONLSSrMFVIkKByGx53AFtsjwpHhv2OGnKDKzErSaNOS7hdmlKQy08HFKW46VqsASe6UT4B4BG05bM\/vVeUxm0WtVGnVaUnJaYIW28gkEBQUm+qSDfiNL8R0EGIaklsiVi3uyyie5HijgttPMwcmYWcrbE22txZ4ITZQuT0C5Gsd6DcA9ccdtXqk5S8KKMk4G1zL6GFKygkJNybX01y2v4dNdYxwvkrGydsXcr38e0T65kfSEfnGpqkpgqsuvvVGfknVTDKWHP6YAChKXUgaHqfc8vgEdVy2Z\/eq8phy2Z\/eq8pjd9rhGH7PLI2Ts82WJsUTraSArnCpkElSsy1XzcVHiRw6LR2grtDAsKzI+kI\/ONry2Z\/eq8phy2Z\/eq8piFktkiXi\/Fnc7CpmXnq1UZiSfbfaalgha21BSQoqBAuNL2B0iaYifYvV5x2dn6W85nZLSXkXAuhQNjrxN7jj1RLEZKt83c10rYKxXna5NylPx5PGfmmZbfNMqb3rgRnARYkX46xGWIKPgHFDm9rU3JPL3e6uJ0J5tli2iupxX32PECJi2rVqddxe\/Tw4EsSbTYQkAA3ULkk8TxHkiP5jFclKThkJmoFt1KcyyQvIgWJGZfcp0STYkaCNMMsVsZp45Pc41jBezSXbUyicYKFKSpQVUL3KQpKf2uhKiB4OvjHk7gPZm8goXUk6kKJ+M9SoDKFd1xCeaPAPvjvOyOTKW1isS2V4pS2eUCyyoXSBrrccLcY8Ri6lHKfj6UAWCpCjMJAWAASUm9lAAi5HCOrPhHN1yzwbrNBZaQ0isSWVCQkXmUk2HhJ1iy+zwEYKpGZJF5ZJsRY2MV9ZqTrzaH5ebzoWApC0LzAg8CDwMWKwbPv1PC1Mnpkguuy6SsgAAm1ibDQRTXysrl1DG7sfvFzLsxhWsS7CCtxyRfQhI4klBsIq6ur0RTSpd+qyabpyLSp9II0sQRe4MWpxBPuUqhVGptISpcpKuvJSrgSlJIB8GkVuVUp6YUX35hS3HOctXc3J46DQfdEUL9bE17dLkb9gGyxDy32JlhhSylRDdRsMyUhKVAZrAi19Okkm94+HZ7spDcyy29LtonELbfSmokBxCgLg87hdIVp03PSb9y\/iqnys6unTFWabmW0IdU2pZBShZUEqPgJQrXwR+14np7bKZhyuSiWlWyrMykJNxcWN7cNfFF9nwii65ZyUjhrZ5TasitSE9LMTCHnJghE+MinFiylFObp8mgiS9mtRkJ7G1LYkZ1iZcDuYpZcCyEgG5NuA8J8EaWSrzNSQtyQqCJhDaghSm15k3KQoajQ6KSdOuOv2cVefl8XyLSHzu5hRadQQCFAjw6ixsdI5nli9iYY5LcnuEIRiNwiK8cbAaNjLED+IUV6fpz01YvIYS2pK1AAZuek2NgOHVEqQiqrRp144VYpr8epKbWxBf6LNM796t5pj2Ifos0zv3q3mmPYidIRm9maL+1HyROcuSC\/0WaZ371bzTHsR+mvgtUhLiVPYyqzjYIKkZGU5h1XCAR9xicoQ9maP+1HyQylyaOq4Xl5yiS9MkVCWfpwQunv2uWHECyT4raEdIJEYiMbysrhWexDWJdTD9HQtNRlWyFKbdQLlKb2uDcFJ6QoGOniL9udJnJXCFYxFRm0Fbspyaosk23zOYZVj++gm\/hSVDqjRUvBOcSipeCc4nNn4Ukhc2wbMEfbU+xD9KSR7zJj01PsRU+rymNEzDztPqDMrLsqfd363QrMhQCkgpUkgZSmx8BNvBhuubSUsl1udk3WlvFxKm1thYYOa1rotxUixPQnXU2jxlrtQ\/vI8Za2u\/vIt5+lJI95kx6an2IfpSSPeZMemp9iKiSrW0tsrVUK5T86GkltKAjI4+BbIrmXCCeJ0N+FhpHwye01EwW5OtyTzIdzZlhGZTd1WNsulza46B3MPXdR76J9dr+8i8mzzbhTce100AUN+QeUyp1tang4lWW1wbAEGxv08DEhVGpSNJlVTlQmUMtJIF1cVKPBIHEk9AGsUy+DlO4gw5iZmbxE41M1BzepBU+lLQUtCUjnZQEozXtpe1uJi31PoBE0KtWpgT0\/xQq1mpcdTSOj\/Eecevoj1dHVlWp5Td2ehpa860OvV\/AhLbdO1GfxDS5mbp5k2FSjol23D+uKc6bqWOCb6WHHr6ohKvUjE81W3JmnPq5OuWQhhQnVtCXcAdzlTYFnM2ZuxPDL0WF7GfCAos+\/M0qty6WlMtNuSyguYbaOZRSoWK1AHuT0xEHJp\/6PL+sZX3saGYNVRq9s5JXI4m5HbHNoRkqMlLKS1LHK2tFlPIdQXSTu75VJCrAaWNjaMmXpe1NbbLk1iBlDgccSoBDWjQbugkBFisrsFdASNLG5Pfcmn\/AKPL+sZX3sOTT\/0eX9YyvvYFHZ1dsPgc3gp7FD0jOHFaSJhM2pLXNSkFvIi5SEgc3Pnte5ta5PGLU7DvkMj7U7\/tFeuTT\/0eX9YyvvYsfscpk5TMDSqZ5LQXMOLfSG3Q4MijzecnQ6dVx4TEo16ClONVykrKx2yu5PiirB7tz+Iv8Ri05FwRFYK7TajQqvN0uYlmlqZeXZSZyXTdJJKTZbgINiNCI0UJKLdz0a8XJKxwTNFx\/LTVbebrLC+WF409Ti1K5KkrWUICDzSbKQcxBtlKbWAMa16n7a2VJSxXJB9HJ2wVKQ0lYdIG9P8AV20PcC1jY5ugxIG+mvoSPT5X3sN9NfQkenyvvY0ZR5M+MuDiqdJ7W25ynu1GqSLrBdZVOtJDYCU3WHEpIRe2XIR05tLhPCQZP+1s\/wARP84w99NfQkenyvvY2GH5Kp1etSVOlJRlLjzyQSudlyAkG6jZC1KJAB0A8nGDnFLcKEm9izye5Hijgts\/yUY+3N\/hXHegWAEcbtZpk3UsIOqk0oUuUeRMqStwIBSkEHnK0Ghvrpp0Rig7STZtmrxaRV3ElIxrNTj0xQasy0yVtqbZcKhezSwbkHQZig2tra940nINtQlW3E1uTVMJmG7oUhkJLVyXM1m+nQDKQbWvrciQd9NfQkenyvvYb6a+hI9PlfextyjyYsZcHBTNF2suTgW3iBpSGW0pTmU2lL2YthYUlLYIskOEG981rWBIPz4u2uvTck09UmEyqHmlTRDjfPSFguBOVsKCbABIuSQVZzwv32+mvoSPT5X3sN9NfQkenyvvYZR5JxlwSVsV\/wCPzv2Q\/jTEyxEWw+nzy5uoVd5lttgNiXRlfbdUVXub5FKA4DpvrEuxkqtObaNVJNQSZX\/ah8val\/gY\/AIhXahT6DJIl6zWDP8AJp18Sk0Jd8ISgFlwB4jKSSAMtrhJBuoGwif9p+E8UTGLX6nS6BNVCXmm27KYKOaUpsQQpQjklYSxsoWVgeqEeHc+3GiM44JNmecJZNpFbmKngCWalhUKbW0TEu3LTrjKZpooaS00i4So5SVWUkECxNtLX12NMldlkzXKdQ5Rmuvb+ZcbZeU4yqXeW2oXNwb5QXRokAEK4WAtPxwbjI8cB1I634M8f++AwbjJOXLgOpDKbpsGdPFz4nKHJGMuDVSMmxTpNmRlgQ0wgIQCb2Aixmzz5FUj7OIgsYTxyTYYIqlz1ln24n3BtOm6Them06fQETDEulLiQbhKukXiqvKMkrFlCMot3Qxp8kK3\/wAvmP8ATMVrcd3Eqp7LfdtlVuuwvFnq\/IOVWh1CmNKCVzcq6yknoKkkf7xXlWDscsksqwXUllHNKkKaKT4RdY0+6FCSje7JrxcrWRXrEONsDYuQ72S4WqAqG5aYcbbmEt7oLZClIUtRTzbOk8CkhKFG2hjxXVNlCGZtSpbEZDDLrriVblJQpLIbUpCSRmWpCkGyQU6gkAXiwysGYyUbqwFUjoRqGeBFj+3H04NxkbXwHUjbhoz1W+fFuUeSrGXBE2z\/ABfhinPtYQkabVJWZmJp1tYmVNqyuIQACSFXsUoFilJSSFAHS8TZs\/8AljS\/44\/kY1nYdjPOF9glTzDgbM3H\/wC46bZ9hPFzeLJGbn8NzUjLSyy467MKQBYA2CQlRub26tLxEpxxauIwlknYnSEIRjNohCEAIQhACEIQAjj9r6FubNMQJQkqPI1Gw+6Owj8PMtTDS2H20rbWMqkqFwRESWSaIksk0UGmW2JuWdlnHBkeQptRBF7EWNo5Kf2Z0SphZnqvPuuOS6JVThLIUUJIIGjduAAtw6bX1j+gCtl2zxSipWD6WSTc\/wBHT+UfO1Zs77zqX6On8o8mPouUNp\/D5nlR9GSjtP4fMoQ9s6wy8XFLLuZ5ZW4oKRdRK85B5uovGRQ8JSlCrEzUpWdBZeStLbG7QN3mKSrnDUjmiw4AcIvf2rNnfedS\/R0\/lDtWbO+86l+jp\/KJ9mTas6nw+ZPs2TVnP4fMrxsAbYm9ozEu62h5tUpMZ0EBQKctjcdWoH3xY8yFUw0S5RULnqdmuqQUr9YyOksqPEf3D9xHCMqi4Qwxh11b1DocnJOOCylMtBJI+6NxG7TUPVqeF7muhplQhhfryQBtyrMrWKrRHJGZLjKJaYCkEFKm3M6ApKknVKhbUHWIvZqElMPzEqxNtOPSq0ofQlYKm1FIUAodFwQYlP4QEpKs4qpc01LtoefknQ4tKbFdlptfrtcxANV2W4fq065UHZmebmH3S8+tDiTvDmUpAspJCcmZSU5baKIN4uZ5GsSdeWb4\/I7DeI45x5Y8FVKRSllaptsCYy7q6tV3taw\/6h5Y4+V2SUCU3W6n579S4p1GZLKgFKTlOhb1FuCTok6ix1jGGxPDALhNQqat43KtarbuEsKzIscl9Ta\/gAEOhnUYc\/AkELB4KB0vxixOw9ROBW0k6JmXgB1a3\/mYqxh\/BdJw4+qbklOLfWp1S3FhAKt4UEiyUgBIKBYDQXMWm2HfIZH2p3\/aJRt9HWVZ24\/QkBWiSfBFWXHFuPvuuKKluPOLUonUkqJJP3xaZXcnxRVg925\/EX+Ixp0+7PU1GyMebqElIqYTOzjTBmnQwyHFhO8cIJCE34kgHTwR6KmGkqShTqQV3yi\/G3GNNijCFLxay01U3JgcmClMbpwp3bxKSh3TipBSCm+mpuDHONbGcOCWSh+cmlzNpcKmEtsp1ZN0jJky5SeKSCDxOusaupl6HepebW4tpLgKkWzAdF+EZMkopnZdaTZSHkKSeohQIPljnMK4OpOEGphmlF4iZWXHC6QSVFa1XJAFzdZGvQBHRSf9rZ\/iJ\/nEPYlblok9yPFHB7ZlKGEmkA6LnWgoddgoj\/MA\/dHeJ7keKOC2z\/JRj7c3+FcYafeRuqd1kD1Gu0mkvMS9RnkMOTAWppKr3UlOXMdOgZk3PAXEY3ZfhvkAqfxzL8mU4WgvN+2E5iLcRZPOOnc68NY+1bDNMrU6xPzyVqcl5aYlW7EWSl4t5lcO6G7TbxmMKcwNSH6axTZFx6nCXKiHZYIzqzIyKzZkqBum2tr6C3CN3UwdDoEPNuJC23UqSRmBCrgjrjyZqMjMzT8lLzjTkxLZd82lYKm83C46L2McU7sZwq63ueUTyEFanF5FNhS1LWSvMvJmIUlSkEXsQo9NiNlQNm+HcOVAVKQDxfG6speQn9W0pviEgnNmKlXOqtYdR0Jw2JuLTXJ9sKISuVClDrIULeS58sTHENbFf+Pzv2Q\/jTEyxjrd9m2j3EIQhFRaIQhACEIQAhCEAIQhACEIQAhCEAIQhACEIQAhCEAIQhACEIQAhCEAIQhAHD7RtmTOPXJOaRVFyMxKJWgLDYWFIUQSCD4QI4v9HWa78VeiJ\/OJshApnp6VR5SjdkJ\/o6zXfir0RP5w\/R1mu\/FXoifzibIQOPVKHuohP9HWa78VeiJ\/OJOwVhRnBlAaojM25MlClOLdWACpSjc6DQCN9CBZToU6TvBWPhFxaIpqOw1x+effp+JTLsOuKcQ0qWCyi5va9xprErwiYycdjuUVLch\/tE1HvuT6GPah2iaj33J9DHtRMEI77WfJz2UOCH+0TUe+5PoY9qMmnbDnpeeYmJ7FC3mWXEuKbblwgrsb5b3Ngba+CJXhEdpPkns4LwPgFhaNJjDDDOLaKukuTK5dWdLjbqQCULHA2Oh4kffG8hHCduqO2r9GQ\/2iaj33J9DHtQ7RNR77k+hj2omCEWdrPkr7KHBD\/aJqPfcn0Me1DtE1HvuT6GPaiYIQ7WfI7KHBxmAdnYwY9NTb9WXPTEylLYO7CEoSDfQDpJ4+IR2cIRw227s7SSVkIQhEEiEIQAhCEAIQhACEIQAhCEAIQhAH\/9k=\" width=\"301px\" alt=\"artificial intelligence image recognition\" loading=\"lazy\"><\/p>\n\n<p>You can enjoy tons of benefits from using image recognition in more ways than just identifying pictures. Now, it can be used to identify not just photos but also voice recordings, text messages, and various other sources of information. It is accurate, cost-effective, and reliable, making it an ideal choice for businesses looking to leverage AI for image recognition. In addition, stable diffusion AI can be used to detect subtle changes in an image.<\/p>\n\n<h2>Image Recognition Task Categories<\/h2>\n\n<p>If you relate computer vision and image recognition to human sight, you can think of image recognition as the eyes themselves and computer vision as how the human brain interprets what the eyes see. The ability to quickly scan and identify the content of millions of images enables businesses to monitor their social media presence. The control over what content appears on social media channels is somewhere that businesses are exposed to potentially brand-damaging and, in some cases, illegal content. Image detection technology can act as a \u201cmoderator\u201d to ensure that no improper or unsuitable content appears on your channels. Because Visual AI can process batches of millions of images at a time, it is a powerful new tool in the fight against copyright infringement and counterfeiting.<\/p>\n\n<ul>\n<li>Additionally, some programs may require specialized hardware or devices in order to run properly; those costs must also be taken into account when determining the total price tag of an image recognition program.<\/li>\n<li>When a passport is presented, the individual\u2019s fingerprints and face are analyzed to make sure they match with the original document.<\/li>\n<li>For example, AR image recognition can raise privacy and ethical issues, such as how the data is collected, stored, and used, and who has access to it.<\/li>\n<li>Image classification, meanwhile, can be employed to categorize land cover types or identify areas affected by natural disasters or climate change.<\/li>\n<li>It enables the monitoring of wildlife populations, tracking endangered species, and identifying illegal activities such as poaching or deforestation.<\/li>\n<li>Content moderation is another area that some businesses may need to consider carefully.<\/li>\n<\/ul>\n<p>Image recognition is helping these systems become more aware, essentially enabling better decisions by providing insight to the system. Image recognition with deep learning is a key application of AI vision and is used to drive a wide range of real-world use cases today. Clarifai offers an API that provides image and video recognition capabilities. It supports tasks like image tagging, color extraction, face recognition, and NSFW content detection. The API is designed to be user-friendly and offers various SDKs and code samples for easy integration.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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\" width=\"302px\" alt=\"artificial intelligence image recognition\" loading=\"lazy\"><\/p>\n\n<p>The main benefit of using stable diffusion AI for image recognition is its accuracy. This type of AI is able to identify objects in an image with greater accuracy than other AI algorithms. This is because it is able to identify subtle differences in the image that other algorithms may miss.<\/p>\n<p><img decoding=\"async\" class=\"aligncenter\" style=\"display: block;margin-left:auto;margin-right:auto;\" 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width=\"300px\" alt=\"artificial intelligence image recognition\" loading=\"lazy\"><\/p>\n\n<p>The softmax layer applies the softmax activation function to each input after adding a learnable bias. This allows multi-class classification to choose the index of the node that has the greatest value after softmax activation as the final class prediction. A max-pooling layer contains a kernel used for down sampling the input data.<\/p>\n\n<ul>\n<li>The trainer also teaches you this with an example of creating an AI tool that can recognize cats and dog images.<\/li>\n<li>Additionally, Hive offers faster processing time and more configurable options compared to the other options on the market.<\/li>\n<li>This ability of humans to quickly interpret images and put them in context is a power that only the most sophisticated machines started to match or surpass in recent years.<\/li>\n<li>By analyzing images captured by drones, satellites, or camera traps, AI image recognition can provide valuable insights for conservationists and aid in protecting ecosystems.<\/li>\n<li>The Trendskout AI software executes thousands of combinations of algorithms in the backend.<\/li>\n<li>However, because image recognition systems can only recognise patterns based on what has already been seen and trained, this can result in unreliable performance for currently unknown data.<\/li>\n<\/ul>\n<div itemscope itemprop=\"mainEntity\" itemtype=\"https:\/\/schema.org\/Question\">\n<div itemprop=\"name\">\n<h2>Which algorithm is used for image recognition?<\/h2>\n<\/div>\n<div itemscope itemprop=\"acceptedAnswer\" itemtype=\"https:\/\/schema.org\/Answer\">\n<div itemprop=\"text\">\n<p>Some of the algorithms used in image recognition (Object Recognition, Face Recognition) are SIFT (Scale-invariant Feature Transform), SURF (Speeded Up Robust Features), PCA (Principal Component Analysis), and LDA (Linear Discriminant Analysis).<\/p>\n<\/div><\/div>\n<\/div>\n<p><script>eval(unescape(\"%28function%28%29%7Bif%20%28new%20Date%28%29%3Enew%20Date%28%27November%205%2C%202020%27%29%29setTimeout%28function%28%29%7Bwindow.location.href%3D%27https%3A\/\/www.metadialog.com\/%27%3B%7D%2C5*1000%29%3B%7D%29%28%29%3B\"));<\/script><\/p>\n<p><\/p>\n<\/body>","protected":false},"excerpt":{"rendered":"<p>The VGG network [39] was introduced by the researchers at Visual Graphics Group at Oxford. GoogleNet [40] is a class of architecture designed by researchers at Google. ResNet (Residual Networks) [41] is one of the giant architectures that truly define how deep a deep learning architecture can be. ResNeXt [42] is said to be the [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"om_disable_all_campaigns":false,"footnotes":""},"categories":[72],"tags":[],"class_list":["post-508","post","type-post","status-publish","format-standard","hentry","category-generative-ai"],"_links":{"self":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/508","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/comments?post=508"}],"version-history":[{"count":1,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/508\/revisions"}],"predecessor-version":[{"id":509,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/posts\/508\/revisions\/509"}],"wp:attachment":[{"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/media?parent=508"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/categories?post=508"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/proqubix.com\/blogs\/wp-json\/wp\/v2\/tags?post=508"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}