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Natural Image Understanding via sparse coding

机译:通过稀疏编码了解自然图像

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Traditional methods for Natural Image Understanding can both be computationally expensive and lack robustness. A recently proposed technique for Natural Image Understanding, based on sparse coding, is computationally less expensive and has demonstrated the capability to correctly identify objects from particular types of noisy images. In this paper we examine the ability of this sparse coding technique to handle broader challenges that are likely to be relevant for Natural Image Understanding systems in practice. We find that it remains robust for varied viewing angles, expressions, and illumination. However, identification accuracy suffers when the size of the training database is significantly less than the size of the testing set. We propose a simple technique that could improve the reliability and accuracy of sparse coding based Natural Image Understanding systems.
机译:用于自然图像理解的传统方法可能在计算上既昂贵又缺乏鲁棒性。最近基于稀疏编码提出的用于自然图像理解的技术在计算上更便宜,并且已经展示了从特定类型的嘈杂图像中正确识别对象的能力。在本文中,我们研究了这种稀疏编码技术处理更广泛挑战的能力,这些挑战在实践中可能与“自然图像理解”系统有关。我们发现它对于各种视角,表情和照明仍然保持鲁棒性。但是,当训练数据库的大小显着小于测试集的大小时,识别准确性会受到影响。我们提出了一种简单的技术,可以提高基于稀疏编码的自然图像理解系统的可靠性和准确性。

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