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    Computer Vision In Python For Beginners (Theory & Projects)

    Posted By: ELK1nG
    Computer Vision In Python For Beginners (Theory & Projects)

    Computer Vision In Python For Beginners (Theory & Projects)
    Last updated 11/2022
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 10.64 GB | Duration: 27h 7m

    Computer Vision-Become an ace of Computer Vision, Computer Vision for Apps using Python, OpenCV, TensorFlow, etc.

    What you'll learn
    • The introduction and importance of Computer Vision (CV).
    • Why is CV such a popular field nowadays?
    • The fundamental concepts from the absolute beginning with comprehensive unfolding with examples in Python.
    • Practical explanation and live coding with Python.
    • The concept of colored and black and white images with practice.
    • Deep details of Computer Vision with examples of every concept from scratch.
    • TensorFlow (Deep learning framework by Google).
    • The use and applications of state-of-the-art Computer Vision (with implementations in state-of-the-art framework Numpy and TensorFlow).
    • Theory and implementation of Panoramic images.
    • Geometric transformations.
    • Image Filtering with implementation in Python.
    • Edge Detection, Shape Detection, and Corner Detection.
    • Object Tracking and Object detection.
    • 3D images.
    • Building your own applications for change detection in the live feed of cameras by using Computer Vision Techniques using Python.
    • Developing a complete project to make a very intelligent and efficient DVR using Python.
    Requirements
    • No prior knowledge is needed. You will start from the basics and slowly build your knowledge in computer vision.
    • A willingness to learn and practice.
    • Knowledge of Python will be a plus.
    • Since we teach by practical implementations, practice is a must.
    Description
    Comprehensive Course Description:Computer vision (CV), a subfield of computer science, focuses on replicating the complex functionalities of the human visual system. In the CV process, real-world images and videos are captured, processed, and analyzed to allow machines to extract contextual, useful information from the physical world.Until recently, computer vision functioned in a limited capacity. But due to the recent innovations in artificial intelligence and deep learning, this field has made great leaps. Today, CV surpasses humans in most routine tasks connected with detecting and labeling objects.The high-quality content of the Mastering Computer Vision from the Absolute Beginning Using Python course presents you with a great opportunity to learn and become an expert. You will learn the core concepts of the CV field. This course will also help you to understand the digital imaging process and identify the key application areas of CV. The course is:· Easy to understand.· Descriptive.· Comprehensive.· Practical with live coding.· Rich with state of the art and updated knowledge of this field.Although this course is a compilation of all the basic concepts of CV, you are encouraged to step up and experience more than what you learn. Your understanding of every concept is tested at the end of each section. The Homework assignments/tasks/activities/quizzes along with solutions will assess your learning. Several of these activities are focused on coding so that you are ready to run with implementations.The two hands-on projects in the last section—Change Detection in CCTV Cameras (Real-time) and Smart DVRs (Real-time)—make up the most important learning element of this course. They will help you sharpen your practical skills. Successful completion of these two projects will help you enrich your portfolio and kick-start your career in the CV field.The course tutorials are divided into 320+ videos along with detailed code notebooks. The videos are available in HD, and the total runtime of the videos is 27 hours+.Now is the perfect time to learn computer vision. Get started with this best-in-class course without any further delay!Teaching is our passion:In this course, we apply the proven learning by doing methodology. We build the interest of learners first. We start from the basics and focus on helping you understand each concept clearly. The explanation of each theoretical concept is followed by practical implementation. We then encourage you to create something new out of your learning.Our aim is to help you master the basic concepts of CV before moving onward to advanced concepts. The course material includes online videos, course notes, hands-on exercises, project work, quizzes, and handouts. We also offer you learning support. You can approach our team in case of any queries, and we respond in quick time.Course Content:The comprehensive course consists of the following topics:1. Introductiona. Introi. What is computer vision?2. Image Transformationsa. Introduction to imagesi. Image data structureii. Color imagesiii. Grayscale imagesiv. Color spacesv. Color space transformations in OpenCVvi. Image segmentation using Color space transformationsb. 2D geometric transformationsi. Scalingii. Rotationiii. Sheariv. Reflectionv. Translationvi. Affine transformationvii. Projective geometryviii. Affine transformation as a matrixix. Application of SVD (Optional)x. Projective transformation (Homography)c. Geometric transformation estimationi. Estimating affine transformationii. Estimating Homographyiii. Direct linear transform (DLT)iv. Building panoramas with manual key-point selection3. Image Filtering and Morphologya. Image Filteringi. Low pass filterii. High pass filteriii. Band pass filteriv. Image smoothingv. Image sharpeningvi. Image gradientsvii. Gaussian filterviii. Derivative of Gaussiansb. Morphologyi. Image Binarizationii. Image Dilationiii. Image Erosioniv. Image Thinning and skeletonizationv. Image Opening and closing4. Shape Detectiona. Edge Detectioni. Definition of edgeii. Naïve edge detectoriii. Canny edge detector1. Efficient gradient computations2. Non-maxima suppression using gradient directions3. Multilevel thresholding- hysteresis thresholdingb. Geometric Shape detectioni. RANSACii. Line detection through RANSACiii. Multiple lines detection through RANSACiv. Circle detection through RANSACv. Parametric shape detection through RANSACvi. Hough transformation (HT)vii. Line detection through HTviii. Multiple lines detection through HTix. Circle detection through HTx. Parametric shape detection through HTxi. Estimating affine transformation through RANSACxii. Non-parametric shapes and generalized Hough transformation5. Key Point Detection and Matchinga. Corner detection (Key point detection)i. Defining Cornerii. Naïve corner detectoriii. Harris corner detector1. Continuous directions2. Tayler approximation3. Structure tensor4. Variance approximation5. Multi-scale detectionb. Project: Building automatic panoramasi. Automatic key point detectionii. Scale assignmentiii. Rotation assignmentiv. Feature extraction (SIFT)v. Feature matchingvi. Image stitching6. Motiona. Optical Flow, Global Flowi. Brightness constancy assumptionii. Linear approximationiii. Lucas–Kanade methodiv. Global flowv. Motion segmentationb. Object Trackingi. Histogram based trackingii. KLT trackeriii. Multiple object trackingiv. Trackers comparisons7. Object detectiona. Classical approachesi. Sliding windowii. Scale spaceiii. Rotation spaceiv. Limitationsb. Deep learning approachesi. YOLO a case study8. 3D computer visiona. 3D reconstructioni. Two camera setupsii. Key point matchingiii. Triangulation and structure computationb. Applicationsi. Mocapii. 3D Animations9. Projectsa. Change detection in CCTV cameras (Real-time)b. Smart DVRs (Real-time)After completing this course successfully, you will be able to:· Relate the concepts and theories in computer vision with real-world problems.· Implement any project from scratch that requires computer vision knowledge.· Know the theoretical and practical aspects of computer vision concepts.Who this course is for:· Learners who are absolute beginners and know nothing about Computer Vision.· People who want to make smart solutions.· People who want to learn computer vision with real data.· People who love to learn theory and then implement it using Python.· People who want to learn computer vision along with its implementation in realistic projects.· Data Scientists.· Machine learning experts.

    Overview

    Section 1: Introduction to Course and Instructor

    Lecture 1 Why Computer Vision

    Lecture 2 Introduction to Instructor

    Lecture 3 About AI Sciences

    Lecture 4 Course Outline (Optional)

    Lecture 5 Methodology

    Lecture 6 Computer Vision Applications

    Lecture 7 Final Project

    Lecture 8 Request for Your Honest Review

    Lecture 9 Github & OneDrive Link to get the Course Materials

    Section 2: Introduction to Images

    Lecture 10 Github & OneDrive Link to get the Course Materials

    Lecture 11 Grayscale Image

    Lecture 12 Quiz(Grayscale Image)

    Lecture 13 Solution(Grayscale Image)

    Lecture 14 Python Warning

    Lecture 15 Grayscale Spectrum

    Lecture 16 Answer to Question

    Lecture 17 Reading, Manipulating and Saving Grayscale Image using Matplotlib Python

    Lecture 18 Quiz(Reading, Manipulating and Saving Grayscale Image using Matplotlib Python)

    Lecture 19 Solution(Reading, Manipulating and Saving Grayscale Image using Matplotlib Python)

    Lecture 20 Reading, Manipulating and Saving Grayscale Image using OpenCV Python

    Lecture 21 Introduction to RGB Images

    Lecture 22 Quiz(Introduction to RGB Images)

    Lecture 23 Solution(Introduction to RGB Images)

    Lecture 24 RGB Color Images Matplotlib and OpenCV

    Lecture 25 Quiz(RGB Color Images Matplotlib and OpenCV)

    Lecture 26 Solution(RGB Color Images Matplotlib and OpenCV)

    Lecture 27 RGB to HSV theory and Algorithm

    Lecture 28 RGB to HSV Algorithm Implementation using Python

    Lecture 29 Quiz(RGB to HSV Algorithm Implementation using Python)

    Lecture 30 Solution(RGB to HSV Algorithm Implementation using Python)

    Lecture 31 Red Rose Extraction or Segmentation using HSV Python

    Lecture 32 Quiz(Red Rose Extraction or Segmentation using HSV Python)

    Lecture 33 Solution(Red Rose Extraction or Segmentation using HSV Python)

    Lecture 34 Hyper Spectral Images

    Section 3: 2D Scaling Transformations

    Lecture 35 Github & OneDrive Link to get the Course Materials

    Lecture 36 Introduction to Geometric Transformations

    Lecture 37 Scaling Example in OpenCV

    Lecture 38 Quiz(Scaling Example in OpenCV)

    Lecture 39 Solution(Scaling Example in OpenCV)

    Lecture 40 Scaling in Real Space

    Lecture 41 Quiz(Scaling in Real Space)

    Lecture 42 Solution(Scaling in Real Space)

    Lecture 43 Linear Transformation Explained

    Lecture 44 Scaling is a Linear Transformations

    Lecture 45 Scaling as a Matrix Multiplication Example Python

    Lecture 46 Quiz(Scaling as a Matrix Multiplication Example Python)

    Lecture 47 Solution(Scaling as a Matrix Multiplication Example Python)

    Lecture 48 Image Coordinate System

    Lecture 49 Image Copy and Flipping Vertically

    Lecture 50 Quiz 01(Image Copy and Flipping Vertically)

    Lecture 51 Solution 01(Image Copy and Flipping Vertically)

    Lecture 52 Quiz 02(Image Copy and Flipping Vertically)

    Lecture 53 Solution 02(Image Copy and Flipping Vertically)

    Lecture 54 Continuous Coordinates

    Lecture 55 Saturations and Holes

    Lecture 56 Image Doubling and Holes using Python

    Lecture 57 Inverse Scaling and Quiz

    Lecture 58 Solution and Nearest Neighbour Interpolation

    Lecture 59 Inverse Scaling Python

    Lecture 60 Quiz 01(Inverse Scaling Python)

    Lecture 61 Solution 01(Inverse Scaling Python)

    Lecture 62 Quiz 02 (Inverse Scaling Python)

    Lecture 63 Solution 02(Inverse Scaling Python)

    Lecture 64 Nearest Neighbour Interpolation

    Lecture 65 Weighted Average vs Simple Average

    Lecture 66 Bilinear Interpolation

    Lecture 67 Bilinear Interpolation Implementation in Python

    Lecture 68 Scaling Transformation with Bilinear Interpolation Implementation

    Lecture 69 Scaling Transformation Algorithm(Recap)

    Lecture 70 Exam

    Lecture 71 Exam Solution 01

    Lecture 72 Exam Solution 02

    Section 4: 2D Geometric Transformations

    Lecture 73 Github & OneDrive Link to get the Course Materials

    Lecture 74 Rotation Introduction

    Lecture 75 Optional Rotation is Linear Transform Proof

    Lecture 76 Rotation can Result Negative Coordinates(Problem)

    Lecture 77 Rotation Computing Width and Hight of Resultant Image(Solution)

    Lecture 78 Rotation Index Shifting

    Lecture 79 Quiz(Rotation Index Shifting)

    Lecture 80 Solution(Rotation Index Shifting)

    Lecture 81 Rotation Implementation Complete

    Lecture 82 Quiz(Rotation Implementation Complete)

    Lecture 83 Solution(Rotation Implementation Complete)

    Lecture 84 Rotation Implementation(Good Coding Practice)

    Lecture 85 Quiz(Rotation Implementation(Good Coding Practice))

    Lecture 86 Solution(Rotation Implementation(Good Coding Practice))

    Lecture 87 Reflection Introduction

    Lecture 88 Quiz(Reflection Introduction)

    Lecture 89 Solution(Reflection Introduction)

    Lecture 90 Reflection Implementation

    Lecture 91 Quiz 01(Reflection Implementation)

    Lecture 92 Solution 01(Reflection Implementation)

    Lecture 93 Quiz 02(Reflection Implementation)

    Lecture 94 Solution 02(Reflection Implementation)

    Lecture 95 Shear Introduction

    Lecture 96 Shear Implementation and Quiz

    Lecture 97 Translation and its Nonlinearity(Problem)

    Lecture 98 Homoginuous Coordinates

    Lecture 99 Translation as a Matrix(solution)

    Lecture 100 Homoginuous Representations Off all Transformations

    Lecture 101 Affine Transformation Implementation

    Lecture 102 Quiz(Affine Transformation Implementation)

    Lecture 103 Rotation about any Point Theory

    Lecture 104 Rotation about any Point Implementation

    Lecture 105 Reflection about a Line Quiz

    Lecture 106 Solution(Reflection about a Line)

    Lecture 107 Transformation Matrix Properties

    Lecture 108 Transformation Matrix Properties Implementation

    Lecture 109 Affine Transformation Hierarchy

    Lecture 110 Optional Affine Transformation SVD

    Lecture 111 Projective Transformation Homography

    Lecture 112 Projective Transformation Implementation

    Lecture 113 Projective Warping Algorithm

    Section 5: Geometric Transformation Estimation(Panorama)

    Lecture 114 Github & OneDrive Link to get the Course Materials

    Lecture 115 Goal

    Lecture 116 Affine Transformation Estimation Introduction

    Lecture 117 Quiz(Affine Transformation Estimation Introduction)

    Lecture 118 Solution(Affine Transformation Estimation Introduction)

    Lecture 119 Affine Transformation Estimation Points Correspondences

    Lecture 120 Estimation Points Marking using Python and Quiz

    Lecture 121 Affine Transformation Min Number of Points Needed

    Lecture 122 Affine Transformation Estimation using Python

    Lecture 123 Affine Transformation Estimation Verification using Python

    Lecture 124 Affine Transformation Estimation with more than 3 Points

    Lecture 125 Quiz(Affine Transformation Estimation with more than 3 Points)

    Lecture 126 Solution(Affine Transformation Estimation with more than 3 Points)

    Lecture 127 Affine Transformation Estimation with more than 3 Points Implementation

    Lecture 128 Quiz(Affine Transformation Estimation with more than 3 Points Implementation)

    Lecture 129 Solution(Affine Transformation Estimation with more than 3 Points Implementation)

    Lecture 130 Optional Affine Transformation Estimation with LeastSquared

    Lecture 131 Projective Transformation Estimation Introduction

    Lecture 132 Projective Transformation Estimation First Implementation having Bug

    Lecture 133 Projective Transformation Estimation Reason of the Bug

    Lecture 134 Projective Transformation Estimation Removing Scale Factor

    Lecture 135 Projective Transformation Estimation DLT

    Lecture 136 Projective Transformation Estimation DLT Nullspace and Why 4 Points

    Lecture 137 Projective Transformation Estimation DLT Nullspace Implementation

    Lecture 138 DLT Implementation

    Lecture 139 Quiz(DLT Implementation)

    Lecture 140 Panorama Stitching

    Lecture 141 Panorama Stitching Implementation in OpenCV

    Lecture 142 How Projective Transformation Helps in Panorama

    Section 6: Binary Morphology

    Lecture 143 Github & OneDrive Link to get the Course Materials

    Lecture 144 Binary Images Theory

    Lecture 145 Binary Images Python

    Lecture 146 Structuring Element Kernel and Sliding Window Theory

    Lecture 147 Structuring Element Python

    Lecture 148 Erosion Theory

    Lecture 149 Quiz 01(Erosion Theory)

    Lecture 150 Solution 01(Erosion Theory)

    Lecture 151 Quiz 02(Erosion Theory)

    Lecture 152 Solution 02(Erosion Theory)

    Lecture 153 Erosion Python

    Lecture 154 Dilation Theory

    Lecture 155 Quiz 01(Dilation Theory)

    Lecture 156 Solution 01(Dilation Theory)

    Lecture 157 Quiz 02(Dilation Theory)

    Lecture 158 Solution 02(Dilation Theory)

    Lecture 159 Dilation Python

    Lecture 160 Opening Theory

    Lecture 161 Opening Python

    Lecture 162 Closing Theory

    Lecture 163 Closing Python

    Lecture 164 Gradient Morphology

    Lecture 165 Gradient Morphology Python

    Lecture 166 Tophat Blackhat

    Section 7: Image Filtering

    Lecture 167 Github & OneDrive Link to get the Course Materials

    Lecture 168 Image Blurring 01

    Lecture 169 Image Blurring 02

    Lecture 170 General Image Filtering

    Lecture 171 Convolution

    Lecture 172 Naive Edge Detection

    Lecture 173 Image Sharpening

    Lecture 174 Quiz(Image Sharpening)

    Lecture 175 Solution(Image Sharpening)

    Lecture 176 Implementation Of Image Blurring Edge Detection Image Sharpening in Python

    Lecture 177 Lowpass Highpass Bandpass Filters

    Lecture 178 CNN Course(You can Skip)

    Section 8: Canny Edge Detector

    Lecture 179 Github & OneDrive Link to get the Course Materials

    Lecture 180 Canny Edge Detector Algorithm Introduction

    Lecture 181 Canny Edge Detector OpenCV

    Lecture 182 Quiz(Canny Edge Detector OpenCV)

    Lecture 183 Solution(Canny Edge Detector OpenCV)

    Lecture 184 Gaussian Filter Introduction

    Lecture 185 Gaussian Filter to Mask Computation

    Lecture 186 Gaussian Filter Window Size

    Lecture 187 Gaussian Filter Implementation

    Lecture 188 Quiz(Gaussian Filter Implementation)

    Lecture 189 Solution(Gaussian Filter Implementation)

    Lecture 190 Gaussian Filter Smoothing Implementation

    Lecture 191 Quiz(Gaussian Filter Smoothing Implementation)

    Lecture 192 Solution(Gaussian Filter Smoothing Implementation)

    Lecture 193 Image Gradients Theory

    Lecture 194 Image Gradients Implementation

    Lecture 195 Image Gradients Implementation Datatype Bug

    Lecture 196 Derivative of Gaussian

    Lecture 197 Derivative of Gaussian Expression

    Lecture 198 Derivative of Gaussian Implementation

    Lecture 199 Applying DOG Filters

    Lecture 200 Gradient Vector

    Lecture 201 Gradient Magnitude and Gradient Direction

    Lecture 202 Non Maxima Suppression

    Lecture 203 Gradient Direction Quantization

    Lecture 204 Quiz(Gradient Direction Quantization)

    Lecture 205 Solution(Gradient Direction Quantization)

    Lecture 206 Gradient Direction Quantization Implementation

    Lecture 207 Gradient Direction Quantization Implementation Better Way

    Lecture 208 NMS Implementation

    Lecture 209 Quiz 01(NMS Implementation)

    Lecture 210 Solution 01(NMS Implementation)

    Lecture 211 Quiz 02(NMS Implementation)

    Lecture 212 Solution 02(NMS Implementation)

    Lecture 213 Last Step Thresholding

    Lecture 214 Hesterysis Thresholding

    Lecture 215 Hesterysis Thresholding Implementation

    Section 9: Shape Detection

    Lecture 216 Github & OneDrive Link to get the Course Materials

    Lecture 217 Shape Detection Introduction

    Lecture 218 Why Edge Detection is not Enough

    Lecture 219 RANSAC Introduction

    Lecture 220 RANSAC For Lines Coordinate Arrays

    Lecture 221 RANSAC For Lines Sampling Points Randomly Implemenation

    Lecture 222 Quiz(RANSAC For Lines Sampling Points Randomly Implemenation)

    Lecture 223 Solution(RANSAC For Lines Sampling Points Randomly Implemenation)

    Lecture 224 RANSAC For Lines Fitting Line With 2 Points

    Lecture 225 RANSAC For Lines Fitting Line With 2 Points Implementation

    Lecture 226 Quiz(RANSAC For Lines Fitting Line With 2 Points Implementation)

    Lecture 227 Solution(RANSAC For Lines Fitting Line With 2 Points Implementation)

    Lecture 228 RANSAC For Lines Computing Consistency Score

    Lecture 229 RANSAC For Lines Computing Consistency Score Implementation

    Lecture 230 RANSAC For Lines Implementation

    Lecture 231 RANSAC For Lines Implementation Test on Real Image

    Lecture 232 Drawback

    Lecture 233 RANSAC For Lines Implementation Test on Real Image Drawing and Quiz

    Lecture 234 RANSAC For Circles

    Lecture 235 RANSAC For Circles Consistency Score

    Lecture 236 RANSAC For Circles Implementation

    Lecture 237 RANSAC For Circles Implementation Real Image

    Lecture 238 Drawback

    Lecture 239 RANSAC For Circles Implementation Real Image Drawing

    Lecture 240 RANSAC General

    Lecture 241 RANSAC Quiz

    Lecture 242 RANSAC Quiz Solution

    Section 10: Shape Detection Hough Transform

    Lecture 243 Github & OneDrive Link to get the Course Materials

    Lecture 244 Hough Transform Introduction

    Lecture 245 Hough Transform as Voting

    Lecture 246 Hough Transform as Voting Loop

    Lecture 247 Hough Transform Polar Representation

    Lecture 248 Hough Transform Polar Representation Benifits

    Lecture 249 Hough Transform Polar Representation Implementation

    Lecture 250 Hough Transform Lines Implementation Real Image

    Lecture 251 Hough Transform Lines Parameters Conversion

    Lecture 252 Hough Transform Lines Drawing

    Lecture 253 Solution(Hough Transform Lines Drawing)

    Lecture 254 Hough Transform Fast Version

    Lecture 255 Hough Transform Circles

    Lecture 256 Hough Transform Circles Implementation

    Lecture 257 Hough Transform Circles Implementation Drawing

    Lecture 258 Solution(Hough Transform Circles Implementation Drawing)

    Section 11: Corner Detection

    Lecture 259 Github & OneDrive Link to get the Course Materials

    Lecture 260 Corner Definition

    Lecture 261 Why Corner

    Lecture 262 Corner Measure

    Lecture 263 SSD

    Lecture 264 Why SSD to be Muted Somewhere

    Lecture 265 Corner Detection Implementation 01

    Lecture 266 Corner Detection Implementation 02

    Lecture 267 Corner Detection Implementation 03

    Lecture 268 Moravec Corner Detector

    Lecture 269 Scale Space

    Lecture 270 Infinite Directions Towards Harris Corner Detector

    Lecture 271 Harris Corner Detector 01

    Lecture 272 Harris Corner Detector 02

    Lecture 273 Harris Corner Detector 03

    Lecture 274 Harris Corner Detector 04 Structure Tensor

    Lecture 275 Harris Corner Detector 05 Final Expression

    Lecture 276 Harris Corner Detector Implementation Speedup Convolution

    Lecture 277 Harris Corner Detector Implementation 01

    Lecture 278 Harris Corner Detector Implementation 02

    Lecture 279 Harris Corner Detector as Edge Detector

    Section 12: Automatic Panorama SIFT

    Lecture 280 Github & OneDrive Link to get the Course Materials

    Lecture 281 Point Correspondence Introduction

    Lecture 282 Point Drawing Implementation

    Lecture 283 Scale and Orientation Alignment

    Lecture 284 SIFT and HOG

    Lecture 285 Points Matching

    Section 13: Object Detection

    Lecture 286 Github & OneDrive Link to get the Course Materials

    Lecture 287 Introduction to Object Detection

    Lecture 288 Classification PipleLine

    Lecture 289 Sliding Window Implementation

    Lecture 290 Shift Scale Rotation Invariance

    Lecture 291 Person Detection

    Lecture 292 HOG Features

    Lecture 293 HandEngineering vs CNNs

    Lecture 294 Implementation

    Lecture 295 Activity

    Section 14: YOLO Object Detector

    Lecture 296 Github & OneDrive Link to get the Course Materials

    Lecture 297 CNNS Introduction

    Lecture 298 Face Detection Implementation

    Lecture 299 YOLO Implementation

    Lecture 300 YOLO Image Classfication Revisited

    Lecture 301 YOLO Sliding Window Object Localization

    Lecture 302 YOLO Sliding Window Efficient Implementation

    Lecture 303 YOLO Introduction

    Lecture 304 YOLO Training Data Generation

    Lecture 305 YOLO Anchor Boxes

    Lecture 306 YOLO Algorithm

    Lecture 307 YOLO Non Maxima Supression

    Lecture 308 YOLO RCNN

    Section 15: Motion

    Lecture 309 Github & OneDrive Link to get the Course Materials

    Lecture 310 Optical Flow

    Lecture 311 BC Assumption

    Lecture 312 Optical Flow Derivation

    Section 16: Object Tracking

    Lecture 313 Github & OneDrive Link to get the Course Materials

    Lecture 314 Tracking by Detection

    Lecture 315 Tracking by Detection Motion Model Assumption

    Lecture 316 Tracking KLT TLD

    Lecture 317 Single Object Tracking

    Lecture 318 Multiple Object Tracking

    Lecture 319 WebCam and Saving Annotations of Multiple Object Tracking

    Section 17: 3D Reconstruction

    Lecture 320 Github & OneDrive Link to get the Course Materials

    Lecture 321 3d Reconstruction Introduction

    Lecture 322 3d Motion Capture

    Lecture 323 Camera

    Lecture 324 Camera Matrix

    Lecture 325 Triangulation

    Lecture 326 Camera Matrix Estimation

    Lecture 327 Mocap Revisited

    Section 18: Smart CCTV Project

    Lecture 328 Github & OneDrive Link to get the Course Materials

    Lecture 329 Introduction to the Project

    Lecture 330 Introduction to Data

    Lecture 331 Reading a Video File

    Lecture 332 Change Detection Frame Differencing

    Lecture 333 Change Detection Frame Differencing Implementation

    Lecture 334 Change Detection Background Subtraction

    Lecture 335 Change Detection Background Subtraction MOG

    Lecture 336 Denoising using Morphology

    Lecture 337 Connected Components

    Lecture 338 Connected Components Filtering

    Lecture 339 Tracking Change

    Lecture 340 Saving Segments

    Lecture 341 Saving and Viewing Segments

    Lecture 342 Saving and Viewing Segments with Object Detection

    Lecture 343 Applications

    Lecture 344 THANK YOU Bonus Video

    Lecture 345 About AI Sciences

    • Learners who are absolute beginners and know nothing about Computer Vision.,• People who want to make smart solutions.,• People who want to learn computer vision with real data.,• People who love to learn theory and then implement it using Python.,• People who want to learn computer vision along with its implementation in realistic projects.,• Data Scientists.,• Machine learning experts.