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Multipath Sparse Coding Using Hierarchical Matching Pursuit

机译:分层匹配追踪的多径稀疏编码

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Complex real-world signals, such as images, contain discriminative structures that differ in many aspects including scale, invariance, and data channel. While progress in deep learning shows the importance of learning features through multiple layers, it is equally important to learn features through multiple paths. We propose Multipath Hierarchical Matching Pursuit (M-HMP), a novel feature learning architecture that combines a collection of hierarchical sparse features for image classification to capture multiple aspects of discriminative structures. Our building blocks are MI-KSVD, a codebook learning algorithm that balances the reconstruction error and the mutual incoherence of the codebook, and batch orthogonal matching pursuit (OMP), we apply them recursively at varying layers and scales. The result is a highly discriminative image representation that leads to large improvements to the state-of-the-art on many standard benchmarks, e.g., Caltech-101, Caltech-256, MITScenes, Oxford-IIIT Pet and Caltech-UCSD Bird-200.
机译:复杂的现实世界信号(例如图像)包含在许多方面(包括比例,不变性和数据通道)不同的判别结构。虽然深度学习的进展表明了通过多层学习特征的重要性,但通过多种途径学习特征也同样重要。我们提出了多路径分层匹配追踪(M-HMP),这是一种新颖的特征学习体系结构,该体系结构结合了用于图像分类的分层稀疏特征的集合,以捕获判别结构的多个方面。我们的构建块是MI-KSVD,这是一种可平衡重构错误和代码簿的相互不一致性的码本学习算法,以及批处理正交匹配追踪(OMP),我们将它们递归地应用于不同的层和规模。结果是具有高度区分性的图像表示,从而导致对许多标准基准(例如Caltech-101,Caltech-256,MITScenes,Oxford-IIIT Pet和Caltech-UCSD Bird-200)的最新技术进行了重大改进。

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