Dual adaptive model for change detection in multispectral images

Chafle Pratiksha Vasantrao, N. Gupta, Naga Surekha Jonnala, A. Mishra
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Abstract

The change detection (CD), resembles as basic issues in Earth tracking attains the major research concern over the past few decades. There is a considerable enhancement in the CD resource data in view of the rapid evolution in the satellite sensors in the current years, which provides very-high-resolution multispectral image with copious change evidences. However, localizing the precise varying area is considered as the real challenge. Hence, this research attempts to develop the Dual adaptive model to precisely locate the real changed areas. The pixel evaluation is done by the fusion network that hybrid the pre-trained model like segnet, U-net, ResNet and Fc-densenet. The pre-trained model is hybridized by the fusion parameter that is productively trained by using the adaptive optimization. The experimental result exhibits that the Dual adaptive model exceeds the competent model considering accuracy, precision, recall and F1-measure.
多光谱图像变化检测的双自适应模型
变化检测(CD)作为地球跟踪中的基本问题,在过去的几十年里得到了主要的研究关注。由于近年来卫星传感器的快速发展,CD资源数据有了很大的增强,提供了具有丰富变化证据的高分辨率多光谱图像。然而,精确定位变化区域被认为是真正的挑战。因此,本研究试图建立双自适应模型来精确定位真实变化区域。像素的评估是由混合预训练模型(如segnet, U-net, ResNet和Fc-densenet)的融合网络完成的。利用自适应优化有效训练的融合参数对预训练模型进行杂交。实验结果表明,双自适应模型在准确率、精密度、召回率和F1-measure方面都优于胜任模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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