Postgraduate Certificate in CNNs for Self-Driving Cars
-- ViewingNowThe Postgraduate Certificate in Convolutional Neural Networks (CNNs) for Self-Driving Cars is a comprehensive course designed to meet the surging industry demand for AI and machine learning experts. This certificate course equips learners with essential skills in CNNs, a critical technology for computer vision and object detection, which are at the heart of self-driving cars.
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과정 세부사항
• Convolutional Neural Networks (CNNs): An introduction to CNNs, including their architecture and fundamental concepts. This unit will cover topics such as convolutional layers, pooling layers, and fully connected layers.
• Training CNNs: An exploration of the process of training CNNs, including data preparation, forward and backward propagation, and optimization techniques. This unit will also cover regularization methods to prevent overfitting.
• Transfer Learning and Fine-Tuning: An examination of transfer learning and fine-tuning techniques for CNNs. Students will learn how to leverage pre-trained models to improve the performance of their own models.
• Object Detection and Recognition: An in-depth study of object detection and recognition techniques using CNNs. This unit will cover popular algorithms such as R-CNN, Fast R-CNN, and YOLO.
• Semantic Segmentation: An exploration of semantic segmentation techniques using CNNs. Students will learn about fully convolutional networks (FCNs), U-Net, and other popular algorithms.
• 3D CNNs for Spatial Perception: An introduction to 3D CNNs and their application in spatial perception for self-driving cars. This unit will cover topics such as voxel-based and point-based methods.
• Real-Time Computer Vision: An examination of real-time computer vision techniques for self-driving cars. Students will learn about efficient CNN architectures and optimization techniques for real-time performance.
• Deep Learning Frameworks: A survey of popular deep learning frameworks such as TensorFlow, PyTorch, and Keras. Students will learn how to implement CNNs using these frameworks.
• Evaluation Metrics for CNNs: An exploration of evaluation metrics for CNNs in the context of self-driving cars. This unit will cover metrics such as intersection over union (IoU), precision, recall, and F1 score.
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