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Abnormal event detection in crowded scenes using sparse representation

机译:使用稀疏表示法在拥挤场景中异常事件检测

摘要

We propose to detect abnormal events via a sparse reconstruction over the normal bases. Given a collection of normal training examples, e.g., an image sequence or a collection of local spatio-temporal patches, we propose the sparse reconstruction cost (SRC) over the normal dictionary to measure the normalness of the testing sample. By introducing the prior weight of each basis during sparse reconstruction, the proposed SRC is more robust compared to other outlier detection criteria. To condense the over-completed normal bases into a compact dictionary, a novel dictionary selection method with group sparsity constraint is designed, which can be solved by standard convex optimization. Observing that the group sparsity also implies a low rank structure, we reformulate the problem using matrix decomposition, which can handle large scale training samples by reducing the memory requirement at each iteration from O( ) to O(k) where k is the number of samples. We use the columnwise coordinate descent to solve the matrix decomposition represented formulation, which empirically leads to a similar solution to the group sparsity formulation. By designing different types of spatio-temporal basis, our method can detect both local and global abnormal events. Meanwhile, as it does not rely on object detection and tracking, it can be applied to crowded video scenes. By updating the dictionary incrementally, our method can be easily extended to online event detection. Experiments on three benchmark datasets and the comparison to the state-of-the-art methods validate the advantages of our method.
机译:我们建议通过在正常基础上进行稀疏重建来检测异常事件。给定正常训练示例的集合,例如图像序列或局部时空斑块的集合,我们提出了在正常字典上的稀疏重建成本(SRC)以测量测试样本的正常性。通过在稀疏重建过程中引入每个基准的先验权重,与其他异常值检测标准相比,所提出的SRC更加健壮。为了将超完备的正态基数压缩成一个紧凑的字典,设计了一种新的具有组稀疏约束的字典选择方法,该方法可以通过标准凸优化来解决。观察到组稀疏性还意味着低秩结构,我们使用矩阵分解来重新构造问题,该矩阵分解可以通过将每次迭代的内存需求从O()减少到O(k)来处理大规模训练样本,其中k是样品。我们使用列坐标下降法来求解矩阵分解表示的公式,这从经验上得出了与组稀疏公式相似的解决方案。通过设计不同类型的时空基础,我们的方法可以检测局部和全局异常事件。同时,由于它不依赖于对象检测和跟踪,因此可以应用于拥挤的视频场景。通过逐步更新字典,我们的方法可以轻松扩展到在线事件检测。在三个基准数据集上进行的实验以及与最新方法的比较证明了我们方法的优势。

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