{"id":29306,"date":"2026-05-05T14:01:27","date_gmt":"2026-05-05T14:01:27","guid":{"rendered":"https:\/\/hes.mephi.ru\/?page_id=29306"},"modified":"2026-05-05T14:01:27","modified_gmt":"2026-05-05T14:01:27","slug":"computer-vision","status":"publish","type":"page","link":"https:\/\/hes.mephi.ru\/?page_id=29306","title":{"rendered":"Computer Vision"},"content":{"rendered":"<div id=\"pl-29306\"  class=\"panel-layout\" ><div id=\"pg-29306-0\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29306-0\" data-stretch-type=\"full\" ><div id=\"pgc-29306-0-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-0-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"0\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p><img decoding=\"async\" loading=\"lazy\" class=\"aligncenter wp-image-28479\" src=\"http:\/\/hes.mephi.ru\/wp-content\/uploads\/2026\/04\/Logo_Vish_eng-1.png\" alt=\"\" width=\"250\" height=\"125\" \/><\/p>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-1\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29306-1\" data-stretch-type=\"full-stretched\" ><div id=\"pgc-29306-1-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-1-0-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"1\" ><div class=\"panel-widget-style panel-widget-style-for-29306-1-0-0\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"http:\/\/hes.mephi.ru\/wp-content\/uploads\/2026\/05\/05.04-Computer-Vision.pdf\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tDOWNLOAD THE FULL COURSE SYLLABUS<\/a><\/h3><\/div><\/div><\/div><\/div><\/div><div id=\"pgc-29306-1-1\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-1-1-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"2\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28339\" >\n\t\t\t\t\tBACK TO THE CURRICULUM<\/a><\/h3><\/div><\/div><\/div><\/div><div id=\"pgc-29306-1-2\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-1-2-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"3\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28855\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tBACK TO MASTER'S PROGRAM<\/a><\/h3><\/div><\/div><\/div><\/div><div id=\"pgc-29306-1-3\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-1-3-0\" class=\"so-panel widget widget_sow-headline panel-first-child panel-last-child\" data-index=\"4\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-cae038182b94-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>\t\t\t\t\t\t<a href=\"https:\/\/hes.mephi.ru\/?page_id=28947\" target=\"_blank\" rel=\"noopener noreferrer\">\n\t\t\t\t\tABOUT HES MEPHI<\/a><\/h3><\/div><\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-2\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29306-2\" data-stretch-type=\"full\" ><div id=\"pgc-29306-2-0\"  class=\"panel-grid-cell panel-grid-cell-empty\" ><\/div><div id=\"pgc-29306-2-1\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-2-1-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"5\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-d5be0238ff61-29306\"><div class=\"sow-headline-container \">\n\t<h2 class='sow-headline'>Computer Vision<\/h2><\/div><\/div><\/div><div id=\"panel-29306-2-1-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"6\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">The course aims to develop an engineering understanding of image and video data analysis methods in modern artificial intelligence systems. At the core of the course lies the idea that computer vision systems are part of broader human\u2011machine decision\u2011making systems. The learning process is structured around the following axis: physical world \u2192 sensors \u2192 image \u2192 algorithms \u2192 interpretation \u2192 solution.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-3\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29306-3\" data-stretch-type=\"full\" ><div id=\"pgc-29306-3-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-3-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"7\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t&nbsp;\n<p style=\"text-align: justify; font-family: 'Open Sans';\">Modern digital systems increasingly interact with the physical world through sensors, cameras, and other surveillance devices, and computer vision methods play a key role in converting visual information into data suitable for analysis, interpretation, and decision\u2011making.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">The programme covers three levels of computer vision system analysis:<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">- Physical level \u2014 studying the nature of image formation: shooting geometry, lighting, camera optical properties, and the influence of observation conditions. Understanding these aspects is essential for explaining algorithmic errors.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">- Algorithmic level \u2014 mastering image processing methods: filtering, edge detection, segmentation, feature extraction, and object recognition.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">- Architectural level \u2014 exploring modern computer vision system architectures, including convolutional neural networks (CNNs), detection and segmentation architectures, and multimodal AI systems.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">The practical part of the course is based on experimental study of algorithm behaviour. Students carry out laboratory work with real cameras and sensors: they conduct lighting experiments, analyse the impact of shooting parameters, train computer vision models, and study error sources. This approach builds a practical understanding of how computer vision technologies work.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">Large language models (LLMs) play an important role in the learning process and are used in three roles:<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">As an analytical tool \u2014 to analyse algorithm architectures, generate hypotheses, and explain experimental results;<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">As a development tool \u2014 to generate program code, design system architectures, and analyse algorithm errors;<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">As a critical analysis tool \u2014 to verify experimental results, search for alternative solutions, and evaluate model limitations.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">Upon completing the course, students will know the main computer vision tasks, image processing and feature extraction methods, neural network architectures for image analysis, as well as typical error sources and technology limitations. They will be able to analyse images and video data, apply processing algorithms, train computer vision models, analyse errors, and design system architectures. Practical skills include proficiency in image analysis methods, tools for model development, and ways to integrate computer vision into AI systems \u2014 preparing graduates to tackle real\u2011world engineering challenges in the field of artificial intelligence.<\/p><\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-4\"  class=\"panel-grid panel-has-style\" ><div class=\"siteorigin-panels-stretch panel-row-style panel-row-style-for-29306-4\" data-stretch-type=\"full\" ><div id=\"pgc-29306-4-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-4-0-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"8\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-4e1b8d3af015-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>OBJECTIVES<\/h3><\/div><\/div><\/div><div id=\"panel-29306-4-0-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"9\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Understanding of the physical and algorithmic principles of image formation;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering image processing methods;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of algorithms for extracting features and objects;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering deep learning methods for computer vision tasks;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Understanding the architecture of computer vision systems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Analysis of limitations and errors of computer vision systems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Development of skills in designing applied image analysis systems.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><div id=\"pgc-29306-4-1\"  class=\"panel-grid-cell panel-grid-cell-empty\" ><\/div><div id=\"pgc-29306-4-2\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-4-2-0\" class=\"so-panel widget widget_sow-headline panel-first-child\" data-index=\"10\" ><div class=\"so-widget-sow-headline so-widget-sow-headline-default-4e1b8d3af015-29306\"><div class=\"sow-headline-container \">\n\t<h3 class='sow-headline'>KEY TASKS<\/h3><\/div><\/div><\/div><div id=\"panel-29306-4-2-1\" class=\"so-panel widget widget_sow-editor panel-last-child\" data-index=\"11\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of the physical nature of image formation;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering methods of image processing and analysis;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of feature extraction algorithms;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering methods of object recognition;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Study of modern neural network architectures for computer vision tasks;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Analysis of errors and limitations of computer vision systems;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Mastering methods of experimental study of algorithm behavior;<\/span><\/span><\/h3>\n<h3 style=\"text-align: justify;\"><span style=\"text-align: justify;\"><span style=\"color: #ffffff; font-family: 'Open Sans';\">Developing skills for integrating computer vision into applied AI systems.<\/span><\/span><\/h3>\n<\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-5\"  class=\"panel-grid panel-has-style\" ><div class=\"panel-row-style panel-row-style-for-29306-5\" ><div id=\"pgc-29306-5-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-5-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"12\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<h3 style=\"text-align: justify; font-family: 'Open Sans';\"><span style=\"color: #000000;\"><strong>Main topics of the course:<\/strong><\/span><\/h3>\n<p style=\"text-align: justify; font-family: 'Open Sans';\">1. Introduction to Computer Vision and Real\u2011World Applications. Explores real\u2011world problems requiring visual data analysis (quality control, video surveillance, robotics, medical diagnostics) and introduces the concept of an image as a numerical matrix (pixel values), highlighting the difference between human vision and computer data processing.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">2. Image Feature Extraction and Classical Processing Methods. Covers the concept of feature extraction for industrial tasks (e.g., defect detection), demonstrating classical methods like the Sobel operator and Canny edge detector, and examines how lighting, noise, and scale affect edge detection robustness.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">3. Convolutional Neural Networks (CNNs) for Image Analysis. Introduces CNN architecture, explaining convolution, feature maps, and pooling operations, and guides students through training a simple CNN to understand the full model cycle (data preparation, training, testing) and the phenomenon of overfitting.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">4. Image Classification and Model Training Principles. Focuses on automatic object classification (used in retail and logistics), covering loss functions, accuracy metrics, and optimization, while analysing model errors and systematic bias caused by imbalanced datasets.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">5. Object Detection: Principles and Modern Architectures. Examines object detection tasks (people counting, traffic analysis) and explains detection using bounding boxes, covering modern architectures like YOLO and Faster R\u2011CNN, and tests system robustness under challenging conditions (occlusion, poor lighting).<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">6. Image Segmentation: Semantic and Instance Approaches. Covers image segmentation for tasks in medical diagnostics and robotics, distinguishing between semantic and instance segmentation, and uses models like U\u2011Net or SAM to identify objects at the pixel level and analyse segmentation errors.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">7. Video Data Analysis and Object Tracking. Explores video analysis systems (surveillance, industrial monitoring), introducing object tracking and motion analysis methods, and demonstrates how algorithms associate objects across video frames, analysing complex scenarios (rapid motion, intersecting trajectories).<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">8. Vision\u2011Language Models and Multimodal Systems. Introduces multimodal vision\u2011language models (e.g., CLIP) used in document analysis and intelligent assistants, and applies image captioning models to generate textual descriptions, examining errors in ambiguous or complex scenes.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">9. Computer Vision System Architecture and Data Workflow. Covers the full data processing pipeline (image acquisition, preparation, training, inference, integration), introduces datasets, annotation, and quality metrics, and demonstrates how data quality and markup affect model performance through hands\u2011on dataset creation and training.<\/p>\n\n<p style=\"text-align: justify; font-family: 'Open Sans';\">10. Integration of Computer Vision into Real\u2011World Systems. Focuses on deploying computer vision in practical applications (smart cameras, robotics, quality control), discusses technology limitations (computing resources, latency, data dependence), and culminates in a mini\u2011project (e.g., object counting or defect detection system) to apply learned concepts in a real\u2011world context.<\/p><\/div>\n<\/div><\/div><\/div><\/div><\/div><div id=\"pg-29306-6\"  class=\"panel-grid panel-no-style\" ><div id=\"pgc-29306-6-0\"  class=\"panel-grid-cell\" ><div id=\"panel-29306-6-0-0\" class=\"so-panel widget widget_sow-editor panel-first-child panel-last-child\" data-index=\"13\" ><div class=\"so-widget-sow-editor so-widget-sow-editor-base\">\n<div class=\"siteorigin-widget-tinymce textwidget\">\n\t<p><a style=\"padding: 12px 24px; background: #1e8a8a; color: white; border: none; border-radius: 8px; font-family: Arial, sans-serif; font-size: 16px; font-weight: bold; cursor: pointer; box-shadow: 0 4px 8px rgba(30, 138, 138, 0.3); transition: all 0.3s ease; 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At the core of the course lies the idea that computer vision systems are part of broader human\u2011machine decision\u2011making systems. The learning [&hellip;]<\/p>\n","protected":false},"author":1,"featured_media":0,"parent":28339,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"template-blank3.php","meta":[],"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v18.2 - https:\/\/yoast.com\/wordpress\/plugins\/seo\/ -->\n<title>Computer Vision - \u0412\u0418\u0428 \u041c\u0418\u0424\u0418<\/title>\n<meta name=\"description\" content=\"This course provides an in\u2011depth study of modern data storage and processing systems, including traditional relational databases, NoSQL solutions, and vector databases. 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