基于对数欧氏费雪向量协方差矩阵描述符的图像分类

Sara Akodad, L. Bombrun, C. Yaacoub, Y. Berthoumieu, C. Germain
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引用次数: 4

摘要

介绍了一种基于协方差矩阵编码的图像分类方法。这种编码依赖于适合对数欧几里得度量的Fisher向量:对数欧几里得Fisher向量(LE FV)。然后将该方法扩展到由一组局部均值向量和局部协方差矩阵组成的全局部高斯描述子。为此,将局部高斯模型转化为具有增广协方差矩阵的零均值高斯模型。所有这些方法都用于对手工或深度学习特征进行编码。最后,将它们应用于UC Merced数据集的遥感应用,该数据集包括对土地覆盖图像进行分类。进行了敏感性分析,以评估拟议的LE FV的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image classification based on log-Euclidean Fisher Vectors for covariance matrix descriptors
This paper introduces an image classification method based on the encoding of a set of covariance matrices. This encoding relies on Fisher vectors adapted to the log-Euclidean metric: the log-Euclidean Fisher vectors (LE FV). This approach is next extended to full local Gaussian descriptors composed by a set of local mean vectors and local covariance matrices. For that, the local Gaussian model is transformed to a zero-mean Gaussian model with an augmented covariance matrix. All these approaches are used to encode handcrafted or deep learning features. Finally, they are applied in a remote sensing application on the UC Merced dataset which consists in classifying land cover images. A sensitivity analysis is carried out to evaluate the potential of the proposed LE FV.
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