National University of Defense Technology, Room 436, 47 Yanwachi, Changsha 410073, Hunan, China.
IEEE Trans Pattern Anal Mach Intell. 2012 Mar;34(3):574-86. doi: 10.1109/TPAMI.2011.145.
Inspired by theories of sparse representation and compressed sensing, this paper presents a simple, novel, yet very powerful approach for texture classification based on random projection, suitable for large texture database applications. At the feature extraction stage, a small set of random features is extracted from local image patches. The random features are embedded into a bag-of-words model to perform texture classification; thus, learning and classification are carried out in a compressed domain. The proposed unconventional random feature extraction is simple, yet by leveraging the sparse nature of texture images, our approach outperforms traditional feature extraction methods which involve careful design and complex steps. We have conducted extensive experiments on each of the CUReT, the Brodatz, and the MSRC databases, comparing the proposed approach to four state-of-the-art texture classification methods: Patch, Patch-MRF, MR8, and LBP. We show that our approach leads to significant improvements in classification accuracy and reductions in feature dimensionality.
受稀疏表示和压缩感知理论的启发,本文提出了一种基于随机投影的简单、新颖但非常强大的纹理分类方法,适用于大型纹理数据库应用。在特征提取阶段,从局部图像补丁中提取一小部分随机特征。随机特征被嵌入到词袋模型中进行纹理分类;因此,学习和分类都是在压缩域中进行的。所提出的非传统随机特征提取方法简单,但利用纹理图像的稀疏性,我们的方法优于涉及精心设计和复杂步骤的传统特征提取方法。我们在每个 CUReT、Brodatz 和 MSRC 数据库上进行了广泛的实验,将所提出的方法与四种最先进的纹理分类方法进行了比较:Patch、Patch-MRF、MR8 和 LBP。我们表明,我们的方法在分类准确性方面有显著提高,并降低了特征维度。