This course is designed to provide a comprehensive, hands_on experience in applying Deep Learning techniques to Semantic Image Segmentation problems. Are you ready to take your understanding of deep learning to the next level and learn how to apply it to real world problems? In this course, you will learn how to use the power of Deep Learning to segment images and extract meaning from visual data. You will start with an introduction to the basics of Semantic Segmentation using Deep Learning, then move on to implementing and training your own models for Semantic Segmentation with Python and PyTorch.
This course is designed for a wide range of students and professionals, including but not limited to:
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Machine Learning Engineers, Deep Learning Engineers, and Data Scientists who want to apply Deep Learning to Image Segmentation tasks
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Computer Vision Engineers and Researchers who want to learn how to use PyTorch to build and train Deep Learning models for Semantic Segmentation
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Developers who want to incorporate Semantic Segmentation capabilities into their projects
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Graduates and Researchers in Computer Science, Electrical Engineering, and other related fields who want to learn about the latest advances in Deep Learning for Semantic Segmentation
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In general, the course is for Anyone who wants to learn how to use Deep Learning to extract meaning from visual data and gain a deeper understanding of the theory and practical applications of Semantic Segmentation using Python and PyTorch
The course covers the complete pipeline with hands_on experience of Semantic Segmentation using Deep Learning with Python and PyTorch as follows:
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Semantic Image Segmentation and its Real World Applications in Self Driving Cars or Autonomous Vehicles etc.
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Deep Learning Architectures for Semantic Segmentation including Pyramid Scene Parsing Network (PSPNet), UNet, UNet++, Pyramid Attention Network (PAN), Multi Task Contextual Network (MTCNet), DeepLabV3, etc.
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Datasets and Data annotations Tool for Semantic Segmentation
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Google Colab for Writing Python Code
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Data Augmentation and Data Loading in PyTorch
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Performance Metrics (IOU) for Segmentation Models Evaluation
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Transfer Learning and Pretrained Deep Resnet Architecture
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Segmentation Models Implementation in PyTorch using different Encoder and Decoder Architectures
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Hyperparameters Optimization and Training of Segmentation Models
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Test Segmentation Model and Calculate IOU, Class wise IOU, Pixel Accuracy, Precision, Recall and F_score
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Visualize Segmentation Results and Generate RGB Predicted Segmentation Map
By the end of this course, you will have the knowledge and skills you need to start applying Deep Learning to Semantic Segmentation problems in your own work or research. Whether you are a Computer Vision Engineer, Data Scientist, or Developer, this course is the perfect way to take your understanding of Deep Learning to the next level. Lets get started on this exciting journey of Deep Learning for Semantic Segmentation with Python and PyTorch.
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