SE SPP DenseNet
SE SPP DenseNet represents a line of research focused on improving the performance and efficiency of Densely Connected Convolutional Networks (DenseNets) for various image-related tasks, including image classification, object detection, and medical image analysis. Current research emphasizes architectural enhancements, such as incorporating Squeeze-Excitation (SE) blocks and Spatial Pyramid Pooling (SPP) layers, alongside refined training methods to overcome limitations of traditional DenseNet implementations. These advancements aim to boost accuracy, reduce computational costs, and enhance robustness against noise and adversarial attacks, leading to more effective and efficient deep learning models across diverse applications.
Papers
December 30, 2022
December 8, 2022
August 31, 2022
August 2, 2022
July 7, 2022
April 23, 2022
March 4, 2022
February 8, 2022
January 22, 2022
January 9, 2022
January 6, 2022
December 19, 2021
December 13, 2021
November 23, 2021