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Local Computation with Adaptive Spatial Clustering for Multi-Size Motion Patch Proposals in WAMI

机译:WAMI中多尺寸运动补丁提案的自适应空间聚类本地计算

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Near real-time moving object detection in Wide Area Motion Imagery (WAMI) can support applications in many fields. However, since the targets' search space are extremely large, current state-of-the-art methods usually suffers high computational cost. It's crucial to recommend candidate regions for detection first. Different from most research that extracts candidate blobs as proposals, this paper attempts to offer high-quality patches, which can provide background info and be taken as many algorithms' input (convolutional neural network, optical flow, block matching, etc.). First by the idea that local errors are tolerable, neighborhood frame differencing with local computation is applied to roughly obtain irregular blobs. After that, an adaptive spatial clustering algorithm which utilizes grid and density reachable, is proposed to generate multi-size motion patches quickly. Compared with traditional clustering, advantages of this algorithm include parameter-free, saving of time and widely applications. Experimental results show that the proposed method is competitive especially in dense traffic regions.
机译:宽区域动作图像(六)近实时移动对象检测可以在许多领域支持应用程序。然而,由于目标搜索空间非常大,所以当前的最先进的方法通常会遭受高计算成本。建议首先检测候选地区至关重要。与大多数研究不同,提取候选人Blob作为提案,本文试图提供高质量的补丁,可以提供背景信息,并被视为算法的输入(卷积神经网络,光学流,块匹配等)。首先,通过局部错误可以容忍,利用本地计算的邻域帧差异粗略地获得不规则的斑点。之后,建议利用网格和密度可达的自适应空间聚类算法,以便快速生成多尺寸运动块。与传统聚类相比,该算法的优点包括无参数,节省时间和广泛应用。实验结果表明,该方法竞争尤其是密集的交通区。

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