Robust object recognition using a cascade of geometric consistency filters

Yuetian Xu, R. Madison
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引用次数: 3

Abstract

Bag-of-words is a popular and successful approach to performing object recognition. Its performance is limited by not considering relative geometry information. This limitation is particularly stark when there is significant image noise. We propose a “bag-of-phrases” model which extends bag-of-words by enforcing geometric consistency through application of a “geometric grammar” in a filter cascade. Experimental results on a computer generated dataset show increased robustness to clutter and noise as demonstrated by more than two orders of magnitude reduction in false positives compared with bag-of-words.
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鲁棒目标识别使用级联的几何一致性滤波器
词袋是一种流行且成功的对象识别方法。由于不考虑相对几何信息,其性能受到限制。当有明显的图像噪声时,这种限制尤其明显。我们提出了一个“短语袋”模型,该模型通过在过滤器级联中应用“几何语法”来加强几何一致性,从而扩展了单词袋。在计算机生成的数据集上的实验结果表明,与词袋相比,误报率降低了两个数量级以上,从而提高了对杂波和噪声的鲁棒性。
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