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Book Overview & Buying
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Table Of Contents
Hands-On Image Processing and Computer Vision with Python - Second Edition
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In this chapter, we explored modern image segmentation techniques ranging from classical semantic segmentation with U-Net architectures to advanced transformer-based volumetric segmentation using Swin-UNETR. We demonstrated how deep learning models can perform pixel-level understanding across diverse domains such as autonomous driving, medical imaging, remote sensing, and 3D organ analysis. The chapter covered practical implementations using TensorFlow, PyTorch, MONAI, and segmentation_models_pytorch, while also introducing essential concepts such as encoder–decoder architectures, attention mechanisms, transfer learning, volumetric inference, and segmentation evaluation metrics, including IoU, Dice coefficient, and mAP. Together, these methods illustrate how segmentation has evolved into a foundational component of modern computer vision systems for scene understanding, medical diagnosis, and intelligent spatial analysis. Together, these approaches equip the reader...
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