对比增强预处理对时空注意神经网络的影响:遥感变化检测评价

S. Hidayati, Muhammad Izzuddin Al-Islami, D. A. Navastara
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引用次数: 0

摘要

遥感在探测和监测一个地区的物理特征方面具有相当大的优势。文献中有一些值得注意的研究,旨在开发鲁棒的机器学习模型,以基于遥感图像自动进行区域变化检测。然而,迄今为止,还缺乏关于图像增强技术对遥感变化检测机器学习模型影响的详细研究。遥感数据的质量特别有限,不足以支持区域监测。因此,本研究旨在研究图像对比度增强对遥感分类性能的影响,重点是直方图匹配和中值滤波技术。我们利用时空注意神经网络作为基于深度神经网络的检测器模型,在两个基准数据集上进行了实验。报告了精度,召回率和f1分数,以评估作为预处理步骤的对比度增强和不增强的检测器模型的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Preprocessing by Contrast Enhancement on Spatial-temporal Attention Neural Network: An Evaluation in Remote Sensing Change Detection
Remote sensing offers considerable advantages in detecting and monitoring the physical features of an area. There are remarkable studies in the literature geared towards developing robust machine learning models to automate area change detection based on remote sensing images. However, to date there lacks a detailed investigation into the impact of image enhancement techniques on machine learning models for remote sensing change detection. Remote sensing data is particularly limited to sufficient quality to support area monitoring. This study, therefore, aims to examine how significantly image contrast enhancement, with a focus on histogram matching and median filter techniques, contribute to the remote sensing classification performance. We utilize spatial-temporal attention neural network as the deep neural network-based detector model and conduct experiments on two benchmark datasets. Precision, recall, and F1-score are reported to evaluate the classification performance of the detector model with and without contrast enhancement as the preprocessing step.
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