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首页> 外文期刊>IEEE transactions on information forensics and security >Squirrel-Cage Local Binary Pattern and Its Application in Video Anomaly Detection
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Squirrel-Cage Local Binary Pattern and Its Application in Video Anomaly Detection

机译:鼠笼式局部二值模式及其在视频异常检测中的应用

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Local binary pattern (LBP) is one of the most successful feature descriptors. However, LBP and its variants have not been as successful as other feature descriptors in video anomaly detection (VAD). This is because LBP and its variants are mainly designed for spatial texture analysis. Although the volume LBP (VLBP) and the LBP-three orthogonal planes (LPB-TOP) have the capability of describing dynamic texture, they are seldom used as descriptors for VAD because 1) both VLBP and LBP-TOP are more suitable for natural scenes with rich dynamic textures, but sensitive to noise in the scenes with less dynamic textures, 2) the combination of motion and appearance not only limits their capability of motion characterizing but also brings the irrelevant appearance information such as background, and 3) high dimensionality is another drawback. In this paper, a new variant of the LBP called the squirrel-cage LBP (SCLBP) is proposed for VAD. By imitating the structure of squirrel cage rotor, the proposed SCLBP can be regarded as a stretched LBP in temporal direction and has two distinct features: 1) it is computed at vector-wise, rather than at pixel-wise (i.e., for the central vector with respect to its surrounding parallel vectors), and 2) the sign between two vectors is determined by the angle-based thresholding scheme. The SCLBP can effectively encode the motion information and is insensitive to noise and irrelevant disturbances caused by dynamic background and illumination change. To the best of our knowledge, The SCLBP is the first variant of the LBP specially designed for motion characterizing. The SCLBP has great flexibility, extendibility, and low dimensionality (only one-third of the LBP-TOP descriptor). The effectiveness of the proposed SCLBP descriptor is demonstrated on different public data sets and compared with the other dominant descriptors and state-of-the-art approaches in VAD.
机译:本地二进制模式(LBP)是最成功的特征描述符之一。但是,LBP及其变体在视频异常检测(VAD)中没有像其他特征描述符那样成功。这是因为LBP及其变体主要设计用于空间纹理分析。尽管体积LBP(VLBP)和LBP三个正交平面(LPB-TOP)具有描述动态纹理的能力,但由于1)VLBP和LBP-TOP都更适合自然场景,因此很少将它们用作VAD的描述符。具有丰富的动态纹理,但对动态纹理较少的场景中的噪声敏感; 2)运动和外观的组合不仅限制了它们的运动特征描述能力,而且还带来了无关的外观信息(例如背景),以及3)高维度另一个缺点。在本文中,针对VAD提出了一种新的LBP变种,即鼠笼LBP(SCLBP)。通过模拟鼠笼转子的结构,可以将所提出的SCLBP视为在时间方向上的拉伸LBP,它具有两个明显的特征:1)它是按矢量方式而不是按像素方式计算的(即对于中心相对于其周围的平行矢量),以及2)两个矢量之间的符号由基于角度的阈值确定。 SCLBP可以有效地对运动信息进行编码,并且对动态背景和照明变化所引起的噪声和无关干扰不敏感。据我们所知,SCLBP是专门为运动表征而设计的LBP的第一个变体。 SCLBP具有很大的灵活性,可扩展性和低维度(仅占LBP-TOP描述符的三分之一)。所提出的SCLBP描述符的有效性在不同的公共数据集上得到了证明,并与VAD中的其他主要描述符和最新方法进行了比较。

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