{"id":382,"date":"2023-07-25T11:05:33","date_gmt":"2023-07-25T11:05:33","guid":{"rendered":"http:\/\/mlopesadvogados.com.br\/blog\/?p=382"},"modified":"2023-09-18T15:48:46","modified_gmt":"2023-09-18T15:48:46","slug":"best-image-recognition-software-2023-reviews","status":"publish","type":"post","link":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/2023\/07\/25\/best-image-recognition-software-2023-reviews\/","title":{"rendered":"Best Image Recognition Software 2023 Reviews &#038; Comparison"},"content":{"rendered":"<p><img class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/2023\/03\/fozzy.webp\" width=\"302px\" alt=\"ai and image recognition\"\/><\/p>\n<p><p>This can be done either through software that compares the image against a database of known objects or by using algorithms that recognize specific patterns in the image. With enough training time, AI algorithms for image recognition can make fairly accurate predictions. This level of accuracy is primarily due to work involved in training machine learning models for image recognition. As a part of computer vision technology, image recognition is a pool of algorithms and methods that analyze images and find features specific to them.<\/p>\n<\/p>\n<div style='border: black dotted 1px;padding: 13px;'>\n<h3>A Deep Dive into AI Attention Maps: Techniques, Applications, and &#8230; &#8211; Down to Game<\/h3>\n<p>A Deep Dive into AI Attention Maps: Techniques, Applications, and &#8230;.<\/p>\n<p>Posted: Sun, 11 Jun 2023 15:23:21 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMidWh0dHBzOi8vZHRncmV2aWV3cy5jb20vdW5jYXRlZ29yaXNlZC9hLWRlZXAtZGl2ZS1pbnRvLWFpLWF0dGVudGlvbi1tYXBzLXRlY2huaXF1ZXMtYXBwbGljYXRpb25zLWFuZC1jaGFsbGVuZ2VzLzUxMjUwL9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>Google Colaboratory, otherwise known as Colab, is a free cloud service that can be used not only for improving your coding skills but also for developing deep learning applications from scratch. It can be installed directly in a web browser and used for annotating detected objects in images, audio, and video records. Similar to social listening, visual listening lets&nbsp;marketers monitor visual brand mentions and other important entities like logos, objects, and notable people. With so much online conversation happening through images, it&#8217;s a crucial digital marketing tool.<\/p>\n<\/p>\n<p><h2>Principles and Foundations of Artificial Intelligence and Internet of Things Technology<\/h2>\n<\/p>\n<p><p>The paper is concerned with the cases where machine-based image recognition fails to succeed and becomes inferior to human visual cognition. Scientists believe that inaccuracy of machine image recognition can be corrected. Its algorithms are designed to analyze the content of an image and classify it into specific categories or labels, which can then be put to use. Image recognition is an integral part of the technology we use every day \u2014 from the facial recognition feature that unlocks smartphones to mobile check deposits on banking apps. It\u2019s also commonly used in areas like medical imaging to identify tumors, broken bones and other aberrations, as well as in factories in order to detect defective products on the assembly line.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What is AI image recognition called?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Often referred to as &#x201c;image classification&#x201d; or &#x201c;image labeling&#x201d;, this core task is a foundational component in solving many computer vision-based machine learning problems.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>The machine will only be able to specify whether the objects present in a set of images correspond to the category or not. Whether the machine will try to fit the object in the category, or it will ignore it completely. But it is a lot more complicated when it comes to image recognition with machines. <a href=\"https:\/\/metadialog.com\/\">metadialog.com<\/a> Bag of Features models like Scale Invariant Feature Transformation (SIFT) does pixel-by-pixel matching between a sample image and its reference image. The trained model then tries to pixel match the features from the image set to various parts of the target image to see if matches are found.<\/p>\n<\/p>\n<p><h2>Convolutional Neural Network<\/h2>\n<\/p>\n<p><p>Cano and Cruz-Roa (2020) presented a review of one-shot recognition by the Siamese network for the classification of breast cancer in histopathological images. However, one-shot learning is used to classify the set of data features from various modules, in which there are few annotated examples. Deep learning algorithms and image recognition models enable machines to analyze and understand visual data, making it possible to recognize and interpret images. State of the art AI techniques have significantly advanced, allowing for accurate object detection, image classification, and other image analysis tasks.<\/p>\n<\/p>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What AI model for face recognition?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>What Is AI Face Recognition? Facial recognition technology is a set of algorithms that work together to identify people in a video or a static image.<\/p>\n<\/div><\/div>\n<\/div>\n<p><p>And unlike humans, <a href=\"https:\/\/www.metadialog.com\/blog\/ai-in-image-recognition\/\">AI never gets<\/a> physically tired, and as long as it receives data, it will continue to work. But human capabilities are more extensive and do not require a constant stream of external data to work, as it happens to be with artificial intelligence. Additionally, image recognition can help automate workflows and increase efficiency in various business processes. The most widely used method is max pooling, where only the largest number of units is passed to the output, serving to decrease the number of weights to be learned and also to avoid overfitting.<\/p>\n<\/p>\n<p><h2>Build your own image recognition system.<\/h2>\n<\/p>\n<p><p>The training data, in this case, is a large dataset that contains many examples of each image class. The ImageNet Large Scale Visual Recognition Challenge (ILSVRC) was when the moment occurred. The ILSVRC is an annual competition where research teams use a given data set to test image classification algorithms.<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"306px\" alt=\"ai and image recognition\"\/><\/p>\n<p><p>As with any business process, automation can&nbsp;lead to dramatic time savings. CT Vision&nbsp;allows for photo audits, which take much less time than their manual counterparts. Audit accuracy is also greatly improved with image recognition tools&nbsp;that correspond to Salesforce object records.<\/p>\n<\/p>\n<p><h2>How do beginners learn this Neural Network Image Recognition course?<\/h2>\n<\/p>\n<p><p>Surprisingly, many toddlers can immediately recognize letters and numbers upside down once they\u2019ve learned them right side up. Our biological neural networks are pretty good at interpreting visual information even if the image we\u2019re processing doesn\u2019t look exactly how we expect it to. Self-driving cars use it to identify objects on the road, such as other vehicles, pedestrians, traffic lights, and road signs.<\/p>\n<\/p>\n<p><a href=\"https:\/\/metadialog.com\/\"><img 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' alt='https:\/\/metadialog.com\/' class='aligncenter' style='display:block;margin-left:auto;margin-right:auto; width='409px'\/><\/a><\/p>\n<p><p>The prior studies indicated the impact of using pretrained deep-learning models in the classification applications with the necessity to speed up the MDCNN model. Today, neural network image recognition systems are actively spreading in the commercial sector. However, the question of how accurately machines recognize images is still open. At Apriorit, we have applied this neural network architecture and our image processing skills to solve many complex tasks, including the processing of medical image data and medical microscopic data.<\/p>\n<\/p>\n<p><h2>Image Recognition with Machine Learning: How and Why?<\/h2>\n<\/p>\n<p><p>Currently, however, general AI is still just theoretical, and some feel that it is not even achievable. Artificial intelligence, or AI, is \u201cintelligence\u201d demonstrated by machines. In some cases it can actually perform cognitive activities better than humans, particularly those that require extensive calculations. AI, NLP, OCR, image recognition, speech recognition, and voice recognition are a few terms that one commonly hears when discussing AI. To those unfamiliar with the terms, however, these concepts can be quite confusing.<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"302px\" alt=\"ai and image recognition\"\/><\/p>\n<p><p>It turned out that artificial intelligence is not able to recognize any imaginary figure, with the exception of a coloured imaginary triangle. Due to the high contrast with the background, it was recognized correctly. \u201cIt\u2019s visibility into a really granular set of data that you would otherwise not have access to,\u201d Wrona said. Image recognition is most commonly used in medical diagnoses across the radiology, ophthalmology and pathology fields. It requires less computing power than other types of AI, making it more affordable for businesses to use. Additionally, it is easy to use and can be integrated into existing systems with minimal effort.<\/p>\n<\/p>\n<p><h2>Machine Learning<\/h2>\n<\/p>\n<p><p>AR image recognition uses artificial intelligence (AI) and machine learning (ML) to analyze and identify objects, faces, and scenes in real time. In this article, we will explore how AR image recognition can leverage AI and ML to adapt to different contexts and scenarios, and what are some of the benefits and challenges of this technology. The leading architecture used for image recognition and detection tasks is that of convolutional neural networks (CNNs).<\/p>\n<\/p>\n<p><img class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/2022\/12\/cognitive-automation-definition-2.webp\" width=\"307px\" alt=\"ai and image recognition\"\/><\/p>\n<p><p>Everything from barcode scanners to facial recognition on smartphone cameras relies on image recognition. But it goes far deeper than this, AI is transforming the technology into something so  powerful we are only just beginning to comprehend how far it can take us. The goal is to train neural networks so that an image coming from the input will match the right label at the output. Since the beginning of the COVID-19 pandemic and the lockdown it has implied, people have started to place orders on the Internet for all kinds of items (clothes, glasses, food, etc.). Some companies have developed their own AI algorithm for their specific activities.<\/p>\n<\/p>\n<p><h2>How does Pooling Layer work?<\/h2>\n<\/p>\n<p><p>This type of automation uses AI to increase the cognitive capabilities of automation software. By leveraging AI, automation tools can analyze data, make judgments, make decisions, and perform other cognitive tasks. Automation is a general term that refers to the use of computers to perform tasks normally done by humans.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 11px;'>\n<h3>Accelerating Structural Biology Research with AI-Powered Tools &#8211; Down to Game<\/h3>\n<p>Accelerating Structural Biology Research with AI-Powered Tools.<\/p>\n<p>Posted: Mon, 12 Jun 2023 02:37:54 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiamh0dHBzOi8vZHRncmV2aWV3cy5jb20vdW5jYXRlZ29yaXNlZC9hY2NlbGVyYXRpbmctc3RydWN0dXJhbC1iaW9sb2d5LXJlc2VhcmNoLXdpdGgtYWktcG93ZXJlZC10b29scy8zMjY1NC_SAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>As described above, the technology behind image recognition applications has evolved tremendously since the 1960s. Today, deep learning algorithms and convolutional neural networks (convnets) are used for these types of applications. In this way, as an AI company, we make the technology accessible to a  wider audience such as business users and analysts.<\/p>\n<\/p>\n<ul>\n<li>According to this school of thought, speech recognition is a field dedicated to translating spoken language into text by computers.<\/li>\n<li>This can lead to increased processing time and computational requirements.<\/li>\n<li>Keep in mind that an artificial neural network consists of an input, parameters and an output.<\/li>\n<li>This information can then be used to help solve crimes or track down wanted criminals.<\/li>\n<li>By implementing Imagga&#8217;s powerful image categorization technology Tavisca was able to significantly improve the &#8230;<\/li>\n<li>Visual search uses features learned from a deep neural network to develop efficient and scalable methods for image retrieval.<\/li>\n<\/ul>\n<p><p>The ImageNet dataset [28] has been created with more than 14 million images with 20,000 categories. The pattern analysis, statistical modeling and computational learning visual object classes (PASCAL-VOC) is another standard dataset for objects [29]. The CIFAR-10 set and CIFAR-100 [30] set are derived from the Tiny Image Dataset, with the images being labeled more accurately. SVHN (Street View House Number) [32] is a real-world image dataset consisting of numbers on natural scenes, more suited for machine learning and object recognition. NORB [33] database is envisioned for experiments in three-dimensional (3D) object recognition from shape. The 20 Newsgroup [34] dataset, as the name suggests, contains information about newsgroups.<\/p>\n<\/p>\n<ul>\n<li>Voice recognition, however, analyzes a person\u2019s voice and can connect a voice to an identity.<\/li>\n<li>It improves efficiency, and provides new opportunities for automation, decision-making, and enhanced user experiences.<\/li>\n<li>They offer simplified interfaces, documentation, and support for various programming languages.<\/li>\n<li>Now you know about image recognition and other computer vision tasks, as well as how neural networks learn to assign labels to an image or multiple objects in an image.<\/li>\n<li>Then, the neural networks need the training data to draw patterns and create perceptions.<\/li>\n<li>Feature extraction is the first step and involves extracting small pieces of information from an image.<\/li>\n<\/ul>\n<div itemScope itemProp=\"mainEntity\" itemType=\"https:\/\/schema.org\/Question\">\n<div itemProp=\"name\">\n<h2>What is the most popular AI image generator?<\/h2>\n<\/div>\n<div itemScope itemProp=\"acceptedAnswer\" itemType=\"https:\/\/schema.org\/Answer\">\n<div itemProp=\"text\">\n<p>Best AI image generator overall<\/p>\n<p> Bing&apos;s Image Creator is powered by a more advanced version of the DALL-E, and produces the same (if not higher) quality results just as quickly. Like DALL-E, it is free to use. All you need to do to access the image generator is visit the website and sign in with a Microsoft account.<\/br><\/br><\/p>\n<\/div><\/div>\n<\/div>\n","protected":false},"excerpt":{"rendered":"<p>This can be done either through software that compares the image against a database of known objects or by using algorithms that recognize specific patterns in the image. With enough training time, AI algorithms for image recognition can make fairly accurate predictions. This level of accuracy is primarily due to work involved in training machine&hellip; <a class=\"more-link\" href=\"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/2023\/07\/25\/best-image-recognition-software-2023-reviews\/\">Continue reading <span class=\"screen-reader-text\">Best Image Recognition Software 2023 Reviews &#038; Comparison<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[60],"tags":[],"_links":{"self":[{"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/posts\/382"}],"collection":[{"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/comments?post=382"}],"version-history":[{"count":1,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/posts\/382\/revisions"}],"predecessor-version":[{"id":383,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/posts\/382\/revisions\/383"}],"wp:attachment":[{"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/media?parent=382"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/categories?post=382"},{"taxonomy":"post_tag","embeddable":true,"href":"http:\/\/mlopesadvogados.com.br\/blog\/index.php\/wp-json\/wp\/v2\/tags?post=382"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}