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  • Computer visualization: from introduction to mastery, maximum profiling image recognition learning a

       2026-06-23 NetworkingName1530
    Key Point:How can computer-visual research be done to embrace broader future career development and be applied to the development of their own neurological networks and computer-visual applications? The course will be structured around the most common rcnn image recognition algorithm in computer vision, ranging from mathematical theory, modelling framework to practical exercise, allowing you to acquire basic knowledge and learning methods for in-depth lear

    How can computer-visual research be done to embrace broader future career development and be applied to the development of their own neurological networks and computer-visual applications? The course will be structured around the most common rcnn image recognition algorithm in computer vision, ranging from mathematical theory, modelling framework to practical exercise, allowing you to acquire basic knowledge and learning methods for in-depth learning in a short period of time, from theory to practice。

    Purpose: to master the underlying principles of the neural network, and to know why (from mathematical practice to proficiency in code);

    Means: scientific methods. An analysis of theory to practice;

    • results: mastery of basic computer visualization methods to respond to challenges in practice。

    Curriculum:

    Phase 1 image pre-processing

    Lesson 1: opencv and image processing foundation

    Knowledge point: image processing, greyscale extraction, histogram extraction

    Lesson 2: opencv step: image filtering, feature extraction and matching

    Knowledge point: sift, visual and image transformation, edge detection algorithm, etc

    Lesson 3: practice: handwritten character recognition using knn algorithms and opencv

    Stage 2: create your own image recognition neural network

    Lesson 4: to understand the forward and reverse transmission of the nervous network and its physical significance

    Knowledge point: losfunction, cross entropy cost function, gradient drop-in guide

    Lesson 5: train your own network, focusing on some of the skills used in participation and work

    Knowledge point: losfunction, cross entropy cost function, gradient down

    Lesson 6: application of the volta neural network (cnn) in image classification recognition (with python programming and algorithm analysis)

    Knowledge point: data input layer, volume computation layer, incentive layer (sigmoid, tanh, relu, elu), pool layer, full connectivity layer, batchnormalation, learning rate

    Lesson 7: practice, training in hand-written character recognition of a neural network that belongs to you without using any toolkit

    Series 3. Depth condensed neural network progress

    Lesson 8: different types and applications of nervous networks

    Knowledge point: inputs to basic skills, vector point accumulation

    Lesson nine: the principles and practice of deep-volume neural network

    Knowledge point, neurological network migration learning techniques

    Lesson 10: build a photo search system to understand tripletlos and his training skills

    Lesson xi: practice: using tensorflow/keras to build a neural network to classify images

    Phase 4: target testing and lstm labelling

    Lesson 12: target detection algorithm

    Knowledge point: fastrcnn, fastrcnn, yolo, ssd

    Lesson 13: lstm labeled learning

    Lesson xiv: practice: target testing on data sets using tensorflow/keras

    Teaching hours:

    The course will begin on 19 june 2026 and last approximately 16 weeks。

    Target audience:

    Computer visualization is one of the three main applications of artificial intelligence in the future and is a leader in the direction of the application of artificial intelligence technology and is widely used in areas such as face recognition, security and unmanned driving. There is a growing pool of artificially intelligent unicorns in the country, and there is a large talent gap across europe and the united states. The next decade will be a decade of computer-based visualization and application of well blow-outs. This course is aimed at industrial future artificial intelligence and imparts some of my personal experience。

    Expected harvest:

    Knowledge of the basics and algorithms of computer visual image recognition and learning to solve problems encountered in practice。

    Computer network knowledge learning

    Presentations by lecturers:

    Daniel, graduated from the university of science and technology of hong kong in 2011, with a teacher from the signal processing prof. Oscar chan, back brigade law. Worked in france for many years on computer visual related work and is now a computer visual algorithm researcher at ensta-paristech. I am also in charge of recruitment and are willing to share with participants work opportunities in overseas work experience and computer visual algorithms。

    National unified counselling line 136 1033 4399

    Introductory discussion group: 303917420

     
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