一种高效的嵌入式智能摄像机背景估计算法

Vikas Reddy, Conrad Sanderson, B. Lovell, A. Bigdeli
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引用次数: 12

摘要

在大多数智能相机中,从图像序列中分割感兴趣的前景目标是一项重要任务。背景减法是一种流行且有效的分割技术。该方法假设被分析场景的背景模型是已知的。然而,在许多实际情况下,它是不可用的,需要从混乱的图像序列估计。本文以嵌入式系统为目标平台,提出了一种低计算和低内存要求的背景估计顺序技术。第一阶段有点类似于最近提出的聚类背景估计方法,即对图像序列进行逐块分析。对于每个块位置,维护一个代表集,其中包含沿其时间线获得的不同块。其新颖之处在于根据候选块及其邻域的扩展版本的组合频率响应,选择最合适的候选块来迭代填充背景区域。假设最合适的块产生最平滑的响应,间接地加强了场景中结构的空间连续性。对实际监控视频的实验证明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient background estimation algorithm for embedded smart cameras
Segmentation of foreground objects of interest from an image sequence is an important task in most smart cameras. Background subtraction is a popular and efficient technique used for segmentation. The method assumes that a background model of the scene under analysis is known. However, in many practical circumstances it is unavailable and needs to be estimated from cluttered image sequences. With embedded systems as the target platform, in this paper we propose a sequential technique for background estimation in such conditions, with low computational and memory requirements. The first stage is somewhat similar to that of the recently proposed agglomerative clustering background estimation method, where image sequences are analysed on a block by block basis. For each block location a representative set is maintained which contains distinct blocks obtained along its temporal line. The novelties lie in iteratively filling in background areas by selecting the most appropriate candidate blocks according to the combined frequency responses of extended versions of the candidate block and its neighbourhood. It is assumed that the most appropriate block results in the smoothest response, indirectly enforcing the spatial continuity of structures within a scene. Experiments on real-life surveillance videos demonstrate the advantages of the proposed method.
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