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Natural vs. manmade scene classification using statistics of straight lines

机译:使用直线统计进行自然场景与人造场景分类

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Classification of scenes along the semantic categories has received tremendous attention from researchers working in the field of computer vision. The content and the context information obtained from scenes at various levels of granularity have been used to solve the problem of classification of scenes. We propose a simple approach for classifying the scenes on the broader semantic lines of categories, which are natural and manmade (or artificial) scenes. Our approach is based on the observation that at a primitive level of visual processing of scenes, the presence of large number of straight line segments is more discriminative in deciding whether the scene is natural or manmade. We extract and encode the information about the straight line segments as a descriptor and use it to classify the scene as natural or manmade. Then, we compare our descriptor with the common descriptors like HSV (Hue, Saturation and Value) Histogram and Edge Orientation Histograms (EOH).
机译:沿语义类别对场景进行分类已引起计算机视觉领域研究人员的极大关注。从各种粒度级别的场景获得的内容和上下文信息已经用于解决场景的分类问题。我们提出了一种简单的方法,可以根据较宽泛的语义类别对场景进行分类,这些类别是自然场景和人为(或人工)场景。我们的方法基于以下观察结果:在对场景进行视觉处理的原始级别上,在确定场景是自然场景还是人造场景时,大量直线段的存在更具区分性。我们提取有关直线段的信息并将其编码为描述符,然后使用该信息将场景分类为自然或人造。然后,我们将描述符与常见描述符(例如HSV(色相,饱和度和值)直方图和边缘方向直方图(EOH))进行比较。

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