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A Robust Image Classification Scheme with Sparse Coding and Multiple Kernel Learning

机译:具有稀疏编码和多个内核学习的强大图像分类方案

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In recent researches, image classification of objects and scenes has attracted much attention, but the accuracy of some schemes may drop when dealing with complicated datasets. In this paper, we propose an image classification scheme based on image sparse representation and multiple kernel learning (MKL) for the sake of better classification performance. As the fundamental part of our scheme, sparse coding method is adopted to generate precise representation of images. Besides, feature fusion is utilized and a new MKL method is proposed to fit the multi-feature case. Experiments demonstrate that our scheme remarkably improves the classification accuracy, leading to state-of-art performance on several benchmarks, including some rather complicated data-sets such as Caltech-101 and Caltech-256.
机译:在最近的研究中,图像和场景的图像分类引起了很多关注,但在处理复杂的数据集时,某些方案的准确性可能会下降。在本文中,为了更好的分类性能,我们提出了一种基于图像稀疏表示和多个内核学习(MKL)的图像分类方案。作为我们方案的基本部分,采用稀疏编码方法来生成图像的精确表示。此外,利用特征融合,提出了一种新的MKL方法来适合多特征案例。实验表明,我们的方案显着提高了分类准确性,导致若干基准上的最先进的性能,包括一些相当复杂的数据集,如Caltech-101和CALTECH-256。

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