Unsupervised Stacked Capsule Autoencoder for Hyperspectral Image Classification

Erting Pan, Yong Ma, Xiaoguang Mei, Fan Fan, Jiayi Ma
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引用次数: 4

Abstract

Since CapsNet [1] shattered all previous records of algorithms for image recognition, the capsule's conception has attracted bright attention. It interprets an object by the geometrical arrangement of parts. We think it can be transferred to hyperspectral images. In a hyperspectral data cube, each pixel spectrum can be regarded as a continuous curve representing its inherent properties. In the spatial domain, there are various spatial distributions in different positionsand there is usually a specific structural relationship between adjacently distributed categories. Based on HSI data's aforementioned structural characteristics, combined with the stacked capsule autoencoder, we propose our model to achieve an unsupervised HSI classification. In our model, the ConvLSTM is employed to discover part capsules of HSI, and we utilize Set Transformer to encode relations among all parts and indicate object capsules. The decoders of both phases use Gaussian mixture models to reconstruct specific information. Experimental results of the Pavia Center dataset show the exceptional of our model.
用于高光谱图像分类的无监督堆叠胶囊自编码器
由于CapsNet[1]打破了之前所有图像识别算法的记录,胶囊的概念引起了人们的广泛关注。它通过零件的几何排列来解释一个物体。我们认为它可以转换成高光谱图像。在高光谱数据立方体中,每个像元光谱可以看作是一条连续的曲线,表示其固有的属性。在空间领域中,不同位置的空间分布是不同的,相邻分布的类别之间通常存在特定的结构关系。基于上述HSI数据的结构特征,结合堆叠胶囊自编码器,我们提出了我们的模型来实现无监督HSI分类。在该模型中,采用ConvLSTM发现HSI的部件胶囊,并利用Set Transformer对各部件之间的关系进行编码,并表示对象胶囊。两个阶段的解码器都使用高斯混合模型来重建特定的信息。Pavia Center数据集的实验结果表明了该模型的优越性。
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