Low-rank and sparse decomposition based methods find their use in many applications involving background modeling such as clutter suppression and object tracking. While Robust Principal Component Analysis (RPCA) has achieved great success in performing this task, it can take hundreds of iterations to converge and its performance decreases in the presence of different phenomena such as occlusion, jitter and fast motion. The recently proposed deep unfolded networks, on the other hand, have demonstrated better accuracy and improved convergence over both their iterative equivalents as well as over other neural network architectures. In this work, we propose a novel deep unfolded spatiotemporal RPCA (DUST-RPCA) network, which explicitly takes advantage of the spatial and temporal continuity in the low-rank component. Our experimental results on the moving MNIST dataset indicate that DUST-RPCA gives better accuracy when compared with the existing state of the art deep unfolded RPCA networks.
翻译:低级和稀有的分解法在涉及背景模型的许多应用中都使用,例如混凝土抑制和物体跟踪等。虽然强力主元件分析(RPCA)在完成这项任务方面取得了巨大成功,但在存在隔离、杂乱和快速运动等不同现象的情况下,它需要数百次迭代,其性能下降。另一方面,最近提议的深层扩展网络在迭代等同体和其他神经网络结构方面显示出更高的准确性,并改进了趋同性。在这项工作中,我们提出了一个新的深层广博式RPCA(DUST-RPCA)网络,明确利用了低级组件的时空连续性。我们在移动MNIST数据集方面的实验结果表明,DOST-RPCA(RPCA)网络与深层扩展的艺术网络的现有状态相比,其准确性更高。