Deep learning has become increasingly important in the diagnosis of Alzheimer's disease due to its ability to analyze vast amounts of medical data with exceptional accuracy. The goal of this study is to conduct re...
详细信息
A single sensor radar can no longer satisfy the increasingly complex electromagnetic environment. More attention is paid to radar sensor networks, which can obtain more information from different nodes and points of v...
详细信息
A single sensor radar can no longer satisfy the increasingly complex electromagnetic environment. More attention is paid to radar sensor networks, which can obtain more information from different nodes and points of view. Moreover, better detection and tracking performance can be achieved through resource sharing and complementary advantages (joint learning). How to improve the utilization efficiency of multiple radar sensors with limited resources is an open problem, which can be transformed into joint learning in scenarios, such as limited training data or imbalanced samples. This article presents a distributed learning model to solve these problems. It has three phases. Self-reweighting (SR) loss is developed to dynamically rebalance the gradients of positive and negative samples for each category, after which the imbalance of samples can be alleviated. An image generation technique via target reimaging addresses the problem of limited samples. SR loss and image generation are then unified in a federated learning (FL) framework. The classifier is adjusted using virtual representations to further improve learning efficiency. Comparative studies on the Moving and Stationary Target Acquisition and Recognition (MSTAR) dataset demonstrate the advantages of the proposed method.
暂无评论