HIGH-RESOLUTION REMOTE SENSING IMAGE SEGMENTATION METHOD BASED on SRELU

Chenming Li, Xiaoyu Qu, Yao Yang, Hongmin Gao, Yongchang Wang, Dan Yao, and Wenjing Yuan

Keywords

SReLU activation function, Multi-layer perceptron, High-resolution remote sensing image segmentation

Abstract

This study proposes a new activation function, namely, S-type rectified linear unit activation function (SReLU), to alleviate the gradient dispersion of neural network model and improve the segmentation precision of high-resolution remote sensing images (HRI). The advantages and defects of various activation functions in the neural network model are analyzed and compared. A multi-layer perceptron is designed on the basis of this activation function, and principal component analysis is introduced to conduct segmentation experiments on an open high-resolution remote sensing dataset. Results show that the new activation function can accelerate the convergence of the neural network model and improve the accuracy of HRI segmentation effectively.

Important Links:



Go Back