基于卷积神经网络的新型样本级镜像拼接植被伪装伪色复合图像验证

S. Chaudhri, N. S. Rajput, K. Singh
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引用次数: 4

摘要

遥感是对传感器数据模式的分析,以捕捉地球表面的特征。高光谱数据广泛用于表面材料的识别,使用逐像素的唯一特征模式。用于对各种物体和特征进行分类的真色复合材料(RGB)或/和各种伪色复合材料(FCCs)。本文提出了三种新型燃料电池,并与现有的流行燃料电池进行了比较。这些FCCs已经使用三种不同的方法进行了分析,即:(i) k-means (ii)基于补丁的深度网络和(iii)基于样本水平镜像镶嵌(SLMM)的深度网络;用于各种物体或特征的分类,即植被、土壤和道路。利用国家生态观测站网络(NEON)提供的开源数据集,展示了提出的FCCs和基于slmm的深度网络的有效性。我们提出的FCCs和基于slmm的深度网络优于所有其他考虑的FCCs和分类方法。
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The Novel Camouflaged False Color Composites for the Vegetation Verified by Novel Sample Level Mirror Mosaicking Based Convolutional Neural Network
Remote sensing is the analytics of sensor data modalities to capture the earth's surface characteristics. The hyperspectral data widely used for surface material identification by using pixel-wise unique signature patterns. The true-color-composite (RGB) or/and a variety of false-color-composites (FCCs) used to classify various objects and features. In this paper, three novel FCCs have been proposed and compared with already existing popular FCCs. These FCCs have been analyzed using three different approaches viz., (i) k-means (ii) patch-based deep network and (iii) sample level mirror mosaicking (SLMM)-based deep network; for the classification of various objects or features viz., Vegetation, Soil, and Road. The open-source dataset provided by the National Ecological Observatory Network (NEON) has been used to show the efficacy of proposed FCCs and SLMM-based deep-network. Our proposed FCCs and SLMM-based deep networks outperform over all other considered FCCs and classification methods.
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