Explores concept-based, named entity-based, and perspective connections-based image systems, emphasizing the analysis of graphics and visual relationships between images.
Explores techniques for delineation, including Hough transform, gradient orientation, and shape detection, emphasizing the importance of combining graph-based techniques and machine learning.
Explores the challenges in validating computational electromagnetics, emphasizing the importance of reliability functions and techniques for verification and validation.
Explores kernels for simplifying data representation and making it linearly separable in feature spaces, including popular functions and practical exercises.
Explores style transfer, image translation, self-supervised learning, video prediction, and image description generation using deep learning techniques.