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Event Detection Using Quantized Binary Code and Spatial-Temporal Locality Preserving Projections

机译:使用量化二进制代码和时空局部性保留投影的事件检测

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We propose a new video manifold learning method for event recognition and anomaly detection in crowd scenes. A novel feature descriptor is proposed to encode regional optical flow features of video frames, where quantization and binarization of the feature code are employed to improve the differentiation of crowd motion patterns. Based on the new feature code, we introduce a new linear dimensionality reduction algorithm called "Spatial-Temporal Locality Preserving Projections" (STLPP). The generated low-dimensional video manifolds preserve both intrinsic spatial and temporal properties. Extensive experiments have been carried out on two benchmark datasets and our results compare favourably with the state of the art.
机译:我们提出了一种新的视频流形学习方法,用于人群场景中的事件识别和异常检测。提出了一种新颖的特征描述符来对视频帧的区域光流特征进行编码,其中特征码的量化和二值化被用来改善人群运动模式的差异。基于新的特征代码,我们引入了一种新的线性降维算法,称为“时空局部性保留投影”(STLPP)。生成的低维视频流形保留了固有的空间和时间特性。在两个基准数据集上进行了广泛的实验,我们的结果与最新技术水平相媲美。

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