异常事件检测的不同特征和学习模型的评价

Hajananth Nallaivarothayan, D. Ryan, S. Denman, S. Sridharan, C. Fookes
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引用次数: 16

摘要

大量可用的闭路电视录像使得通过人工操作员手动处理这些视频变得非常繁重。这使得通过计算机视觉技术自动处理视频素材成为必要。在过去的几年中,通过计算机视觉技术检测异常活动已经做出了很大的努力。通常,该问题被表述为新颖性检测任务,其中系统在正常数据上进行训练,并要求检测不符合学习的“正常”模型的事件。对于异常活动没有精确的定义;这取决于场景的背景。因此,需要不同的特征集来检测不同类型的异常活动。在这项工作中,我们评估了不同状态的艺术特征的性能,以检测场景中异常物体的存在。这些包括用于检测运动相关异常的光流矢量、用于检测异常物体存在的光流纹理和图像纹理。利用高斯混合模型(GMM)和半二维隐马尔可夫模型(HMM)等最先进的模型对不同组合下提取的特征进行建模,分析其性能。此外,我们将视角归一化应用于提取的特征,以补偿由于相机和考虑对象之间的距离而导致的视角失真。使用公开可用的UCSD数据集对所提出的方法进行了评估,与其他最先进的方法相比,我们证明了改进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evaluation of Different Features and Learning Models for Anomalous Event Detection
The huge amount of CCTV footage available makes it very burdensome to process these videos manually through human operators. This has made automated processing of video footage through computer vision technologies necessary. During the past several years, there has been a large effort to detect abnormal activities through computer vision techniques. Typically, the problem is formulated as a novelty detection task where the system is trained on normal data and is required to detect events which do not fit the learned 'normal' model. There is no precise and exact definition for an abnormal activity; it is dependent on the context of the scene. Hence there is a requirement for different feature sets to detect different kinds of abnormal activities. In this work we evaluate the performance of different state of the art features to detect the presence of the abnormal objects in the scene. These include optical flow vectors to detect motion related anomalies, textures of optical flow and image textures to detect the presence of abnormal objects. These extracted features in different combinations are modeled using different state of the art models such as Gaussian mixture model(GMM) and Semi- 2D Hidden Markov model(HMM) to analyse the performances. Further we apply perspective normalization to the extracted features to compensate for perspective distortion due to the distance between the camera and objects of consideration. The proposed approach is evaluated using the publicly available UCSD datasets and we demonstrate improved performance compared to other state of the art methods.
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