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    Deeplearning:Complete Computer Vision With Genai-12 Projects

    Posted By: ELK1nG
    Deeplearning:Complete Computer Vision With Genai-12 Projects

    Deeplearning:Complete Computer Vision With Genai-12 Projects
    Published 3/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 15.67 GB | Duration: 26h 47m

    CNN, LSTM,GAN,Transfer Learning, Data Augmentation/Annotation, Deepfake,YOLO,Face recognition,object detection,tracking

    What you'll learn

    DEEP LEARNING

    TENSORFLOW

    KERAS

    convolutional neural network (CNN)

    recurrent neural network (RNN)

    LSTM (Long Short-Term Memory)

    Gated Recurrent Unit (GRU)

    Keras Callbacks / Checkpoints /early stopping

    Generative adversarial networks (GANs)

    IMAGE CAPTIONING

    KERAS Preprocessing layers

    Transfer Learning

    IMAGE CLASSIFICATION

    DATA Annotation

    two shot detection MASK RCNN

    ONE SHOT DETECTION YOLO

    YOLO-WORLD

    MOONDREAM

    FACE RECOGNITION

    FACE SWAPPING - DEEP FAKE GENERATION (IMAGE + VIDEOS

    OBJECT DETECTION

    SEMANTIC SEGMENTATION

    INSTANCE SEGMENTATION

    KEYPOINT DETECTION

    POSE DETECTION/ACTION RECOGNITION

    OBJECT TRACKING IN VIDEOS

    OBJECT COUNTING IN VIDEOS

    IMAGE GENERATION BONUS LESSONS

    Requirements

    MACHINE LEARNING Basics

    Python

    Description

    Welcome to the world of Deep Learning! This course is designed to equip you with the knowledge and skills needed to excel in this exciting field. Whether you're a Machine Learning practitioner seeking to advance your skillset or a complete beginner eager to explore the potential of Deep Learning, this course caters to your needs.What You'll Learn:Master the fundamentals of Deep Learning, including Tensorflow and Keras libraries.Build a strong understanding of core Deep Learning algorithms like Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Generative Adversarial Networks (GANs).Gain practical experience through hands-on projects covering tasks like image classification, object detection, and image captioning.Explore advanced topics like transfer learning, data augmentation, and cutting-edge models like YOLOv8 and Stable Diffusion.The course curriculum is meticulously structured to provide a comprehensive learning experience:Section 1: Computer Vision Introduction & Basics: Provides a foundation in computer vision concepts, image processing basics, and color spaces.Section 2: Neural Networks - Into the World of Deep Learning: Introduces the concept of Neural Networks, their working principles, and their application to Deep Learning problems.Section 3: Tensorflow and Keras: Delves into the popular Deep Learning frameworks, Tensorflow and Keras, explaining their functionalities and API usage.Section 4: Image Classification Explained & Project: Explains Convolutional Neural Networks (CNNs), the workhorse for image classification tasks, with a hands-on project to solidify your understanding.Section 5: Keras Preprocessing Layers and Transfer Learning: Demonstrates how to leverage Keras preprocessing layers for data augmentation and explores the power of transfer learning for faster model development.Section 6: RNN LSTM & GRU Introduction: Provides an introduction to Recurrent Neural Networks (RNNs), Long Short-Term Memory (LSTM) networks, and Gated Recurrent Units (GRUs) for handling sequential data.Section 7: GANS & Image Captioning Project: Introduces Generative Adversarial Networks (GANs) and their applications, followed by a project on image captioning showcasing their capabilities.Section 9: Object Detection Everything You Should Know: Delves into object detection, covering various approaches like two-step detection, RCNN architectures (Fast RCNN, Faster RCNN, Mask RCNN), YOLO, and SSD.Section 10: Image Annotation Tools: Introduces tools used for image annotation, crucial for creating labeled datasets for object detection tasks.Section 11: YOLO Models for Object Detection, Classification, Segmentation, Pose Detection: Provides in-depth exploration of YOLO models, including YOLOv5, YOLOv8, and their capabilities in object detection, classification, segmentation, and pose detection. This section includes a project on object detection using YOLOv5.Section 12: Segmentation using FAST-SAM: Introduces FAST-SAM (Segment Anything Model) for semantic segmentation tasks.Section 13: Object Tracking & Counting Project: Provides an opportunity to work on a project involving object tracking and counting using YOLOv8.Section 14: Human Action Recognition Project: Guides you through a project on human action recognition using Deep Learning models.Section 15: Image Analysis Models: Briefly explores pre-trained models for image analysis tasks like YOLO-WORLD and Moondream1.Section 16: Face Detection & Recognition (AGE GENDER MOOD Analysis): Introduces techniques for face detection and recognition, including DeepFace library for analyzing age, gender, and mood from images.Section 17: Deepfake Generation: Provides an overview of deepfakes and how they are generated.Section 18: BONUS TOPIC: GENERATIVE AI - Image Generation Via Prompting - Diffusion Models: Introduces the exciting world of Generative AI with a focus on Stable Diffusion models, including CLIP, U-Net, and related tools and resources.What Sets This Course Apart:Up-to-date Curriculum: This course incorporates the latest advancements in Deep Learning, including YOLOv8, Stable Diffusion, and Fast-SAM.Hands-on Projects: Apply your learning through practical projects, fostering a deeper understanding of real-world applications.Clear Explanations: Complex concepts are broken down into easy-to-understand modules with detailed explanations and examples.Structured Learning Path: The well-organized curriculum ensures easy learning experience

    Overview

    Section 1: Computer Vision Introduction & Basics

    Lecture 1 Introduction

    Lecture 2 Past Present Future Trends

    Lecture 3 Applications

    Lecture 4 Image Processing basics

    Lecture 5 Color Spaces

    Section 2: Neural Networks-Into the world of Deep Learning

    Lecture 6 Intuition Neural Networks

    Lecture 7 Neural Networks

    Lecture 8 Approach to deep learning problems

    Lecture 9 Lifecycle of model 5 steps

    Section 3: Tensorflow and Keras

    Lecture 10 Sequential Vs Functional API

    Lecture 11 Sequential API code

    Lecture 12 Functional API Code

    Lecture 13 ML problem Cost Gradient CV

    Lecture 14 Activation Functions

    Lecture 15 Sequential Vs Functional API

    Lecture 16 Tips for Improving Model Performance

    Lecture 17 Feed Forward Network Implementation and Keras Callbacks

    Lecture 18 Optimizers

    Lecture 19 Loss functions

    Lecture 20 Performance Metrics

    Section 4: Image Classification Explained & Project

    Lecture 21 CNN INTRO

    Lecture 22 CNN_Implementation

    Lecture 23 CNN Exercise -1 Problem

    Lecture 24 CNN Exercise -1 Solution

    Lecture 25 CNN Exercise -2 Problem

    Lecture 26 CNN Exercise -2 Solution

    Section 5: Keras Preprocessing Layers and Transfer Learning

    Lecture 27 Keras Preprocessing Layers Intro

    Lecture 28 Keras Preprocessing Layers Image Augmentation Code

    Lecture 29 Keras Preprocessing Layers Exercise-3

    Lecture 30 Keras Preprocessing Layers Solution-3

    Lecture 31 Transfer Learning Introduction

    Lecture 32 transfer learning code

    Lecture 33 Transfer Learning Exercise 4 -XrayDataset

    Lecture 34 Transfer learning Exercise-4 Solution

    Section 6: RNN LSTM & GRU Introduction

    Lecture 35 LSTM GRU Introduction

    Section 7: GANS & image captioning Project

    Lecture 36 GANs Introduction

    Lecture 37 GAN COMPONENTS

    Lecture 38 GANs Training

    Lecture 39 GANs Applications Pros _ Cons

    Lecture 40 GAN Implementation

    Lecture 41 Project Image Captioning Problem-5

    Lecture 42 Project image captioning solution Part- 1

    Lecture 43 Project image captioning solution Part- 2

    Lecture 44 Project Image captioning solution Part- 3

    Section 8: Datasets Part 1 (Till this Point)

    Lecture 45 Cat Dog Images Datasets

    Lecture 46 Xray DataSet

    Section 9: Object Detection Everything you should know

    Lecture 47 Object Detection Part start

    Lecture 48 Semantic segmentation vs instance segmentation

    Lecture 49 Types of Segmentation

    Lecture 50 Two step object detection

    Lecture 51 RCNN Architecture

    Lecture 52 Fast RCNN

    Lecture 53 Faster RCNN

    Lecture 54 Mask RCNN

    Lecture 55 Intro to YOLO

    Lecture 56 SSD

    Section 10: Image Annotation Tools

    Lecture 57 Image Annotation Tools

    Section 11: YOLO Models for Object Detection, classification, segmentation, Pose Detection

    Lecture 58 YOLOV5 Hardhat & Vest object detection Project-6

    Lecture 59 YOLOv8 intro

    Lecture 60 YOLOv8 classification Project-7

    Lecture 61 Instance segmentation using YOLOV8-seg Project -8

    Lecture 62 Keypoint detection using YOLOV8-pose

    Lecture 63 YOLO on videos

    Section 12: Segmentation using FAST-SAM

    Lecture 64 Fast SAM (Segment Anything Model)

    Section 13: Object Tracking & Counting Project

    Lecture 65 YOLOV8 object Tracking

    Lecture 66 Object Tracking & Counting Project-9

    Section 14: Human Action Recognition Project

    Lecture 67 Human Action Recognition Project 10

    Section 15: Image Analysis Models

    Lecture 68 YOLO-WORLD demo

    Lecture 69 Moondream1

    Section 16: Face Detection & Recognition (AGE GENDER MOOD Analysis)

    Lecture 70 Face Recognition Using DeepFace Project 11

    Section 17: Deepfake Generation

    Lecture 71 DeepFake Generation Project 12

    Section 18: More learning: GENERATIVE AI - Image Generation Via Prompting -Diffusion Models

    Lecture 72 74 Stable Diffusion

    Lecture 73 75 clip and unet for stable diffusion

    Lecture 74 76 Stable diffusion tools

    Lecture 75 77 Stable diffusion tools

    Lecture 76 78 stable diffusion resources

    Lecture 77 79 STABLE DIFFUSION code

    Lecture 78 80 stable diffusion UI

    Lecture 79 81 stable cascade

    Lecture 80 82 forge setup

    Beginner ML practitioners eager to learn Deep Learning,Python Developers with basic ML knowledge,Anyone who wants to learn about deep learning based computer vision algorithms