Separable Convolution
Depthwise separable convolutions are a computationally efficient modification of standard convolutional layers, primarily aimed at reducing the number of parameters and operations in deep neural networks while maintaining comparable accuracy. Current research focuses on integrating this technique into various architectures, including U-Nets, GANs, and Vision Transformers, for applications ranging from image fusion and segmentation to object detection and speech processing. This efficiency boost is particularly significant for deploying deep learning models on resource-constrained devices like embedded systems and mobile platforms, impacting diverse fields from medical imaging to remote sensing.
Papers
November 12, 2024
October 13, 2024
September 7, 2024
August 6, 2024
June 18, 2024
May 30, 2024
May 24, 2024
May 6, 2024
September 3, 2023
July 11, 2023
June 28, 2023
June 24, 2023
June 20, 2023
March 26, 2023
February 9, 2023
January 29, 2023
December 27, 2022
September 22, 2022
September 16, 2022