Codemaps - Segment, Classify and Search Objects Locally

Zhenyang Li, E. Gavves, K. V. D. Sande, Cees G. M. Snoek, A. Smeulders
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引用次数: 24

Abstract

In this paper we aim for segmentation and classification of objects. We propose codemaps that are a joint formulation of the classification score and the local neighborhood it belongs to in the image. We obtain the codemap by reordering the encoding, pooling and classification steps over lattice elements. Other than existing linear decompositions who emphasize only the efficiency benefits for localized search, we make three novel contributions. As a preliminary, we provide a theoretical generalization of the sufficient mathematical conditions under which image encodings and classification becomes locally decomposable. As first novelty we introduce l2 normalization for arbitrarily shaped image regions, which is fast enough for semantic segmentation using our Fisher codemaps. Second, using the same lattice across images, we propose kernel pooling which embeds nonlinearities into codemaps for object classification by explicit or approximate feature mappings. Results demonstrate that l2 normalized Fisher codemaps improve the state-of-the-art in semantic segmentation for PASCAL VOC. For object classification the addition of nonlinearities brings us on par with the state-of-the-art, but is 3x faster. Because of the codemaps' inherent efficiency, we can reach significant speed-ups for localized search as well. We exploit the efficiency gain for our third novelty: object segment retrieval using a single query image only.
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代码映射-局部分割,分类和搜索对象
本文的目标是对目标进行分割和分类。我们提出了一种编码图,它是分类分数和它在图像中所属的局部邻域的联合表述。我们通过对格元素的编码、池化和分类步骤重新排序来获得码图。除了现有的线性分解只强调局部搜索的效率效益之外,我们做出了三个新的贡献。首先,我们从理论上概括了图像编码和分类可以局部分解的充分数学条件。作为第一个创新,我们为任意形状的图像区域引入了l2归一化,这对于使用我们的Fisher编码图进行语义分割来说足够快。其次,使用相同的栅格跨图像,我们提出了核池,将非线性嵌入到代码映射中,通过显式或近似特征映射进行对象分类。结果表明,l2规范化Fisher代码映射提高了PASCAL VOC的语义分割水平。对于对象分类,非线性的加入使我们达到了最先进的水平,但速度快了3倍。由于编码图固有的效率,我们也可以在本地化搜索中获得显著的加速。我们利用效率增益来实现第三个新功能:仅使用单个查询图像进行对象段检索。
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