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Representations of Keypoint-Based Semantic Concept Detection: A Comprehensive Study

机译:基于关键点的语义概念检测的表示形式:一项综合研究

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摘要

Based on the local keypoints extracted as salient image patches, an image can be described as a ¿bag-of-visual-words (BoW)¿ and this representation has appeared promising for object and scene classification. The performance of BoW features in semantic concept detection for large-scale multimedia databases is subject to various representation choices. In this paper, we conduct a comprehensive study on the representation choices of BoW, including vocabulary size, weighting scheme, stop word removal, feature selection, spatial information, and visual bi-gram. We offer practical insights in how to optimize the performance of BoW by choosing appropriate representation choices. For the weighting scheme, we elaborate a soft-weighting method to assess the significance of a visual word to an image. We experimentally show that the soft-weighting outperforms other popular weighting schemes such as TF-IDF with a large margin. Our extensive experiments on TRECVID data sets also indicate that BoW feature alone, with appropriate representation choices, already produces highly competitive concept detection performance. Based on our empirical findings, we further apply our method to detect a large set of 374 semantic concepts. The detectors, as well as the features and detection scores on several recent benchmark data sets, are released to the multimedia community.
机译:基于提取为显着图像补丁的局部关键点,图像可以描述为“视觉袋”(BoW),并且这种表示形式有望用于对象和场景分类。 BoW功能在大规模多媒体数据库的语义概念检测中的性能受各种表示选择的影响。在本文中,我们对BoW的表示形式选择进行了全面的研究,包括词汇量,加权方案,停用词去除,特征选择,空间信息和可视二元图。我们提供了有关如何通过选择适当的表示形式选择来优化BoW性能的实用见解。对于加权方案,我们阐述了一种软加权方法来评估视觉单词对图像的重要性。我们通过实验表明,软加权在很大程度上优于其他流行的加权方案,例如TF-IDF。我们在TRECVID数据集上进行的广泛实验还表明,仅BoW功能以及适当的表示形式选择,已经产生了极具竞争力的概念检测性能。基于我们的经验发现,我们进一步将我们的方法应用于检测大量374个语义概念。这些检测器以及一些最新基准数据集的功能和检测分数已发布到多媒体社区。

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