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A quantitative metric of visual-words separability for a more discriminative visual vocabulary in an unsupervised manner

机译:视觉单词可分离性的定量度量,以无监督的方式提供更具判别性的视觉词汇

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The task of visual vocabulary construction plays an important role in the bag-of-words based pattern analysis and robotic applications. A discriminative vocabulary generation in unsupervised case is an open issue for reducing perceptual aliasing in image matching based applications. In this paper, we present a scheme to evaluate the discriminative power of each visual word quantitatively in terms of Mahalanobis separability, and a discriminative visual vocabulary is obtained through adaptively updating the poor discriminative visual words in an unsupervised manner. The effectiveness of our metric is demonstrated in the experiment of loop-closure detection under strong perceptual aliasing condition in both indoor and outdoor image sequences.
机译:视觉词汇的构建任务在基于词袋的模式分析和机器人应用中发挥着重要作用。在无监督情况下的区分性词汇生成是一个开放的问题,用于减少基于图像匹配的应用程序中的感知混叠。在本文中,我们提出了一种根据马氏距离可分离性定量评估每个视觉词的判别力的方案,并且通过以无监督的方式自适应地更新可辨别的视觉词来获得判别性视觉词汇。在室内和室外图像序列中,在强感知混叠条件下进行闭环检测的实验中,证明了我们的度量的有效性。

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