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A feature clustering approach based on Histogram of Oriented Optical Flow and superpixels

机译:一种基于面向光流动和超顶型直方图的特征聚类方法

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Visual feature clustering is one of the cost-effective approaches to segment objects in videos. However, the assumptions made for developing the existing algorithms prevent them from being used in situations like segmenting an unknown number of static and moving objects under heavy camera movements. This paper addresses the problem by introducing a clustering approach based on superpixels and short-term Histogram of Oriented Optical Flow (HOOF). Salient Dither Pattern Feature (SDPF) is used as the visual feature to track the flow and Simple Linear Iterative Clustering (SLIC) is used for obtaining the superpixels. This new clustering approach is based on merging superpixels by comparing short term local HOOF and a color cue to form high-level semantic segments. The new approach was compared with one of the latest feature clustering approaches based on K-Means in eight-dimensional space and the results revealed that the new approach is better by means of consistency, completeness, and spatial accuracy. Further, the new approach completely solved the problem of not knowing the number of objects in a scene.
机译:Visual Feature Clustering是视频中段对象的经济有效方法之一。然而,用于开发现有算法的假设可以防止它们在诸如在重型相机运动下分段的静态和移动物体的情况下使用。本文通过引入基于超像素的聚类方法和面向光学流量(HOOF)的短期直方图来解决问题。突出的抖动图案特征(SDPF)用作跟踪流的可视特征,并且简单的线性迭代聚类(SLIC)用于获得超像素。这种新的聚类方法是基于通过比较局部蹄和颜色提示来形成高级语义段的合并超像素。将新方法与基于八维空间中的K-Means的最新特征聚类方法之一进行比较,结果显示新方法通过一致性,完整性和空间准确性更好。此外,新方法完全解决了不知道场景中的对象数量的问题。

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