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            課程目錄:Real-Time Object Detection with YOLO培訓
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               Real-Time Object Detection with YOLO培訓

             

             

             

            Introduction

            Overview of YOLO Pre-trained Models Features and Architecture

            The YOLO Algorithm
            Regression-based Algorithms for Object Detection
            How is YOLO Different from RCNN?
            Utilizing the Appropriate YOLO Variant

            Features and Architecture of YOLOv1-v2
            Features and Architecture of YOLOv3-v4
            Installing and Configuring the IDE for YOLO Implementations

            The Darknet Implementation
            The PyTorch and Keras Implementations
            Executing the OpenCV and NumPy
            Overview of Object Detection Using YOLO Pre-trained Models

            Building and Customizing Python Command-Line Applications

            Labeling Images Using the YOLO Framework
            Image Classification Based on a Dataset
            Detecting Objects in Images with YOLO Implementations

            How do Bounding Boxes Work?
            How Accurate is YOLO for Instance Segmentation?
            Parsing the Command-line Arguments
            Extracting the YOLO Class Labels, Coordinates, and Dimensions

            Displaying the Resulting Images

            Detecting Objects in Video Streams with YOLO Implementations

            How is it Different from Basic Image Processing?
            Training and Testing the YOLO Implementations on a Framework

            Troubleshooting and Debugging

            Summary and Conclusion

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