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Spatially constrained sparse coding scheme for natural scene categorization
Affiliation:1. National Institute for Environmental Studies, Tsukuba, Japan;2. Key Laboratory of Agricultural Water Resources, Hebei Laboratory of Agricultural Water-saving, Center for Agricultural Resources Research, Institute of Genetics and Developmental Biology, Chinese Academy of Sciences, Shijiazhuang, China;3. Department of Agroecology–Research Center Foulum, Aarhus University, Tjele, Denmark;4. Sino-Danish Center for Education and Research, Eastern Yanqihu campus, District, Huairou, Beijing, China;5. Institute of Geodesy, University of Stuttgart, Stuttgart, Germany;6. University of Chinese Academy of Sciences, Beijing, China
Abstract:Coding and pooling, the major two sequential procedures in sparse coding based scene categorization systems, have drawn much attention in recent years. Yet improvements have been made for coding or pooling separately, this paper proposes a spatially constrained scheme for sparse coding on both steps. Specifically, we employ the m-nearest neighbors of a local feature in the image space to improve the consistency of coding. The benefit is that similar image features will be encoded with similar codewords, which reduced the stochasticity of a conventional coding strategy. We also show that the Viola–Jones algorithm, which is well-known in face detection, can be tailored to learning receptive fields, embedding the spatially constrained information on the pooling step. Extensive experiments on the UIUC sport event, 15 natural scenes and the Caltech 101 database suggests that scene categorization performance of several popular algorithms can be ubiquitously improved by incorporating the proposed two spatially constrained sparse coding scheme.
Keywords:Scene categorization  Receptive fields learning  Boosting  Sparse coding  Voting  Image classification  Pooling
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