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Large Vocabularies for Keypoint-Based Representation and Matching of Image Patches

机译:基于关键点的图像修补和匹配的大词汇量

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In large visual databases, detection of prospectively similar contents requires simple and robust methods. Keypoint correspondences are a popular approach which, nevertheless, cannot detect (using typical descriptions) similarities in a wider image context, e.g. detection of similar fragments. For such capabilities, the analysis of configuration constraints is needed. We propose keypoint descriptions which (by using sets of words from large vocabularies) represent semi-local characteristics of images. Thus, similar image patches (including similarly looking objects) can be preliminarily retrieved by straightforward keypoint matching. A limited-scale experimental verification is provided. The approach can be prospectively used as a simple mid-level feature matching in large and unpredictable visual databases.
机译:在大型视觉数据库中,检测可能相似的内容需要简单而可靠的方法。关键点对应关系是一种流行的方法,但是,它不能在较宽的图像上下文中(例如,图像描述)检测(使用典型描述)相似性。检测相似片段。对于此类功能,需要分析配置约束。我们提出了关键点描述,这些描述(通过使用来自大量词汇的词组)代表了图像的半局部特征。因此,可以通过简单的关键点匹配来预先检索相似的图像块(包括外观相似的对象)。提供了有限规模的实验验证。该方法有望在大型且不可预测的视觉数据库中用作简单的中级特征匹配。

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