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Scale-Rotation Invariant Pattern Entropy for Keypoint-Based Near-Duplicate Detection

机译:基于关键点的近重复检测的尺度旋转不变模式熵

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摘要

Near-duplicate (ND) detection appears as a timely issue recently, being regarded as a powerful tool for various emerging applications. In the Web 2.0 environment particularly, the identification of near-duplicates enables the tasks such as copyright enforcement, news topic tracking, image and video search. In this paper, we describe an algorithm, namely Scale-Rotation invariant Pattern Entropy (SR-PE), for the detection of near-duplicates in large-scale video corpus. SR-PE is a novel pattern evaluation technique capable of measuring the spatial regularity of matching patterns formed by local keypoints. More importantly, the coherency of patterns and the perception of visual similarity, under the scenario that there could be multiple ND regions undergone arbitrary transformations, respectively, are carefully addressed through entropy measure. To demonstrate our work in large-scale dataset, a practical framework composed of three components: bag-of-words representation, local keypoint matching and SR-PE evaluation, is also proposed for the rapid detection of near-duplicates.
机译:近重复(ND)检测在最近似乎是一个及时的问题,被认为是各种新兴应用程序的强大工具。特别是在Web 2.0环境中,几乎重复的标识使诸如版权执行,新闻主题跟踪,图像和视频搜索等任务成为可能。在本文中,我们描述了一种算法,即尺度旋转不变模式熵(SR-PE),用于检测大规模视频语料库中的近重复项。 SR-PE是一种新颖的模式评估技术,能够测量由局部关键点形成的匹配模式的空间规则性。更重要的是,在可能存在多个ND区域分别经过任意变换的情况下,通过熵测度仔细解决了模式的连贯性和视觉相似性的感知问题。为了证明我们在大规模数据集中的工作,还提出了一个由三个组成部分组成的实用框架:单词袋表示,局部关键点匹配和SR-PE评估,用于快速检测重复项。

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