Convolution Layer
Convolutional layers are fundamental building blocks in convolutional neural networks (CNNs), designed to extract features from data by applying learned filters to input data. Current research focuses on improving efficiency and robustness of convolutional layers, exploring novel architectures like Columnar Stage Networks (CoSNet) for resource-constrained environments and analog optical implementations for faster processing. These advancements are significant for various applications, including image classification, object detection, medical image analysis, and signal processing, enabling more efficient and accurate models for diverse tasks.
Papers
SBPF: Sensitiveness Based Pruning Framework For Convolutional Neural Network On Image Classification
Yiheng Lu, Maoguo Gong, Wei Zhao, Kaiyuan Feng, Hao Li
Synthetic Aperture Radar Image Change Detection via Layer Attention-Based Noise-Tolerant Network
Desen Meng, Feng Gao, Junyu Dong, Qian Du, Heng-Chao Li