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A Multigranularity Surveillance Video Retrieval Algorithm for Human Targets

机译:人体目标的多渊脉监测视频检索算法

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Since human face is often not clear in the surveillance video, this paper proposes a retrieval method on the whole body with fine-grained feature extraction. This method first extracts foreground region of human movement based on Gaussian mixed model (GMM). The human body is divided into two parts, head and below the head, based on the human morphological features and skin color. There are three parts coupled with the whole body, and then, we extract color feature for each part. Secondly, the human body is divided into front and back feature samples according to the a priori knowledge. Calculate the gap between the retrieval eigenvectors and the eigenvectors of the target body, then determine whether match. The experimental results show that this method maintains better retrieval precision when the recall rate is high. This paper target retrieve is real time on video.
机译:由于人类脸部往往在监控视频中往往不清楚,因此本文提出了具有细粒特征提取的全身的检索方法。该方法首先基于高斯混合模型(GMM)提取人体运动的前景区域。基于人体形态特征和肤色,人体分为两部分,头部和头部下方。有三个零件与全身耦合,然后,我们提取每个部分的颜色特征。其次,人体根据先验知识分为前后特征样本。计算检索特征向量和目标体的特征向量之间的间隙,然后确定是否匹配。实验结果表明,当召回速率高时,该方法保持更好的检索精度。此纸张目标检索是视频的实时。

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