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Visual object recognition using DAISY descriptor

机译:使用DAISY描述符的视觉对象识别

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Visual content description is a key issue for the task of machine-based visual object categorization (VOC). A good visual descriptor should be both discriminative enough and computationally efficient while possessing some properties of robustness to viewpoint changes and lighting condition variations. The recent literature has featured local image descriptors, e.g. SIFT, as the main trend in VOC. However, it is well known that SIFT is computationally expensive, especially when the number of objects/concepts and learning data increase significantly. In this paper, we investigate the DAISY, which is a new fast local descriptor introduced for wide baseline matching problem, in the context of VOC. We carefully evaluate and compare the DAISY descriptor with SIFT both in terms of recognition accuracy and computation complexity on two standard image benchmarks - Caltech 101 and PASCAL VOC 2007. The experimental results show that DAISY outperforms the state-of-the-art SIFT while using shorter descriptor length and operating 3 times faster. When displaying a similar recognition accuracy to SIFT, DAISY can operate 12 times faster.
机译:视觉内容描述是基于机器的视觉对象分类(VOC)任务的关键问题。一个好的视觉描述符应该具有足够的判别力和计算效率,同时具有对视点变化和光照条件变化的鲁棒性。最近的文献以局部图像描述符为特色,例如SIFT是VOC的主要趋势。但是,众所周知,SIFT在计算上是昂贵的,尤其是当对象/概念和学习数据的数量显着增加时。在本文中,我们研究了DAISY,它是在VOC的背景下针对宽基线匹配问题引入的一种新的快速局部描述符。我们在识别精度和计算复杂度两个标准图像基准(Caltech 101和PASCAL VOC 2007)上仔细评估和比较了DAISY描述符和SIFT。实验结果表明,在使用DAISY时,其性能优于最新的SIFT描述符长度更短,运算速度提高了3倍。当显示与SIFT相似的识别精度时,DAISY的操作速度可以提高12倍。

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