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    Modern Computer Vision™ OpenCV4, Tensorflow, Keras & PyTorch

    Posted By: ELK1nG
    Modern Computer Vision™ OpenCV4, Tensorflow, Keras & PyTorch

    Modern Computer Vision™ OpenCV4, Tensorflow, Keras & PyTorch
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
    Genre: eLearning | Language: English + srt | Duration: 239 lectures (27h 50m) | Size: 12.6 GB

    Using Python Learn OpenCV4, CNNs, Detectron2, YOLOv5, GANs, Tracking, Segmentation, Face Recognition & Siamese Networks

    What you'll learn
    All major Computer Vision theory and concepts!
    Learn to use PyTorch, TensorFlow 2.0 and Keras for Computer Vision Deep Learning tasks
    OpenCV4 in detail, covering all major concepts with lots of example code!
    Training, fine tuning and analyzing your very own Classifiers
    Learn all major Object Detection Frameworks from YOLOv5, to R-CNNs, Detectron2, SSDs, EfficientDetect and more!
    Deep Segmentation with U-Net, SegNet and DeepLabV3
    Tracking with DeepSORT
    Generative Adverserial Networks (GANs) - Generate Digits, Anime Characters, Transform Styles and implement Super Resolution
    Siamese Networks
    Facial Recognition along with Gender, Age, Emotion and Ethnicity Detection
    Neural Style Transfer and Google Deep Dream
    Transfer Learning, Fine Tuning and Advanced CNN Techniques
    Important Modern CNNs designs like ResNets, InceptionV3, DenseNet, MobileNet, EffiicentNet and much more!
    Understand what CNNs 'see' by Visualizing Different Activations and applying GradCAM

    Requirements
    No programming experience (some Python would be beneficial)
    Basic highschool mathematics
    A broadband internet connection

    Description
    Welcome to Modern Computer Vision™ Tensorflow, Keras & PyTorch!

    AI and Deep Learning are transforming industries and one of the most intriguing parts of this AI revolution is in Computer Vision!

    But what exactly is Computer Vision and why is it so exciting? Well, what if Computers could understand what they’re seeing through cameras or in images? The applications for such technology are endless from medical imaging, military, self-driving cars, security monitoring, analysis, safety, farming, industry, and manufacturing! The list is endless.

    Job demand for Computer Vision workers are skyrocketing and it’s common that experts in the field are making $200,000+ USD salaries. However, getting started in this field isn’t easy. There’s an overload of information, many of which is outdated, and a plethora of tutorials that neglect to teach the foundations. Beginners thus have no idea where to start.

    ======================================================

    Computer vision applications involving Deep Learning are booming!

    Having Machines that can 'see' will change our world and revolutionize almost every industry out there. Machines or robots that can see will be able to

    Perform surgery and accurately analyze and diagnose you from medical scans.

    Enable self-driving cars

    Radically change robots allowing us to build robots that can cook, clean, and assist us with almost any task

    Understand what's being seen in CCTV surveillance videos thus performing security, traffic management, and a host of other services

    Create Art with amazing Neural Style Transfers and other innovative types of image generation

    Simulate many tasks such as Aging faces, modifying live video feeds, and realistically replacing actors in films

    ======================================================

    This course aims to solve all of that!

    Taught using Google Colab Notebooks (no messy installs, all code works straight away)

    27+ Hours of up-to-date and relevant Computer Vision theory with example code

    Taught using both PyTorch and Tensorflow Keras!

    In this course, you will learn the essential very foundations of Computer Vision, Classical Computer Vision (using OpenCV) I then move on to Deep Learning where we build our foundational knowledge of CNNs and learn all about the following topics

    ======================================================

    Detailed OpenCV Guide covering

    Image Operations and Manipulations

    Contours and Segmentation

    Simple Object Detection and Tracking

    Facial Landmarks, Recognition and Face Swaps

    OpenCV implementations of Neural Style Transfer, YOLOv3, SSDs and a black and white image colorizer

    Working with Video and Video Streams

    Our Comprehensive Deep Learning Syllabus includes

    Classification with CNNs

    Detailed overview of CNN Analysis, Visualizing performance, Advanced CNNs techniques

    Transfer Learning and Fine Tuning

    Generative Adversarial Networks - CycleGAN, ArcaneGAN, SuperResolution, StyleGAN

    Autoencoders

    Neural Style Transfer and Google DeepDream

    Modern CNN Architectures including Vision Transformers (ResNets, DenseNets, MobileNET, VGG19, InceptionV3, EfficientNET and ViTs)

    Siamese Networks for image similarity

    Facial Recognition (Age, Gender, Emotion, Ethnicity)

    PyTorch Lightning

    Object Detection with YOLOv5 and v4, EfficientDetect, SSDs, Faster R-CNNs,

    Deep Segmentation - MaskCNN, U-NET, SegNET, and DeepLabV3

    Tracking with DeepSORT

    Deep Fake Generation

    Video Classification

    Optical Character Recognition (OCR)

    Image Captioning

    3D Computer Vision using Point Cloud Data

    Medical Imaging - X-Ray analysis and CT-Scans

    Depth Estimation

    Making a Computer Vision API with Flask

    And so much more

    This is a comprehensive course, is broken up into two (2) main sections. This first is a detailed OpenCV (Classical Computer Vision tutorial) and the second is a detailed Deep Learning

    ======================================================

    This course is filled with fun and cool projects including these Classical Computer Vision Projects

    Sorting contours by size, location, using them for shape matching

    Finding Waldo

    Perspective Transforms (CamScanner)

    Image Similarity

    K-Means clustering for image colors

    Motion tracking with MeanShift and CAMShift

    Optical Flow

    Facial Landmark Detection with Dlib

    Face Swaps

    QR Code and Barcode Reaching

    Background removal

    Text Detection

    OCR with PyTesseract and EasyOCR

    Colourize Black and White Photos

    Computational Photography with inpainting and Noise Removal

    Create a Sketch of yourself using Edge Detection

    RTSP and IP Streams

    Capturing Screenshots as video

    Import Youtube videos directly

    ======================================================

    Deep Learning Computer Vision Projects

    PyTorch & Keras CNN Tutorial MNIST

    PyTorch & Keras Misclassifications and Model Performance Analysis

    PyTorch & Keras Fashion-MNIST with and without Regularisation

    CNN Visualisation - Filter and Filter Activation Visualisation

    CNN Visualisation Filter and Class Maximisation

    CNN Visualisation GradCAM GradCAMplusplus and FasterScoreCAM

    Replicating LeNet and AlexNet in Tensorflow2.0 using Keras

    PyTorch & Keras Pretrained Models - 1 - VGG16, ResNet, Inceptionv3, MobileNetv2, SqueezeNet, WideResNet, DenseNet201, MobileMNASNet, EfficientNet and MNASNet

    Rank-1 and Rank-5 Accuracy

    PyTorch and Keras Cats vs Dogs PyTorch - Train with your own data

    PyTorch Lightning Tutorial - Batch and LR Selection, Tensorboards, Callbacks, mGPU, TPU and more

    PyTorch Lightning - Transfer Learning

    PyTorch and Keras Transfer Learning and Fine Tuning

    PyTorch & Keras Using CNN's as a Feature Extractor

    PyTorch & Keras - Google Deep Dream

    PyTorch Keras - Neural Style Transfer + TF-HUB Models

    PyTorch & Keras Autoencoders using the Fashion-MNIST Dataset

    PyTorch & Keras - Generative Adversarial Networks - DCGAN - MNIST

    Keras - Super Resolution SRGAN

    Project - Generate_Anime_with_StyleGAN

    CycleGAN - Turn Horses into Zebras

    ArcaneGAN inference

    PyTorch & Keras Siamese Networks

    Facial Recognition with VGGFace in Keras

    PyTorch Facial Similarity with FaceNet

    DeepFace - Age, Gender, Expression, Headpose and Recognition

    Object Detection - Gun, Pistol Detector - Scaled-YOLOv4

    Object Detection - Mask Detection - TensorFlow Object Detection - MobileNetV2 SSD

    Object Detection - Sign Language Detection - TFODAPI - EfficientDetD0-D7

    Object Detection - Pot Hole Detection with TinyYOLOv4

    Object Detection - Mushroom Type Object Detection - Detectron 2

    Object Detection - Website Screenshot Region Detection - YOLOv4-Darknet

    Object Detection - Drone Maritime Detector - Tensorflow Object Detection Faster R-CNN

    Object Detection - Chess Pieces Detection - YOLOv3 PyTorch

    Object Detection - Hardhat Detection for Construction sites - EfficientDet-v2

    Object DetectionBlood Cell Object Detection - YOLOv5

    Object DetectionPlant Doctor Object Detection - YOLOv5

    Image Segmentation - Keras, U-Net and SegNet

    DeepLabV3 - PyTorch_Vision_Deeplabv3

    Mask R-CNN Demo

    Detectron2 - Mask R-CNN

    Train a Mask R-CNN - Shapes

    Yolov5 DeepSort Pytorch tutorial

    DeepFakes - first-order-model-demo

    Vision Transformer Tutorial PyTorch

    Vision Transformer Classifier in Keras

    Image Classification using BigTransfer (BiT)

    Depth Estimation with Keras

    Image Similarity Search using Metric Learning with Keras

    Image Captioning with Keras

    Video Classification with a CNN-RNN Architecture with Keras

    Video Classification with Transformers with Keras

    Point Cloud Classification - PointNet

    Point Cloud Segmentation with PointNet

    3D Image Classification CT-Scan

    X-ray Pneumonia Classification using TPUs

    Low Light Image Enhancement using MIRNet

    Captcha OCR Cracker

    Flask Rest API - Server and Flask Web App

    Detectron2 - BodyPose

    Who this course is for
    College/University Students of all levels Undergrads to PhDs (very helpful for those doing projects)
    Software Developers and Engineers looking to transition into Computer Vision
    Start up founders lookng to learn how to implement thier big idea
    Hobbyist and even high schoolers looking to get started in Computer Vision