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Real-Time Subspace-Based Background Modeling Using Multi-channel Data

机译:基于时子空间的基于子空间的背景建模,使用多通道数据

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Background modeling and subtraction using subspaces is attractive in real-time computer vision applications due to its low computational cost. However, the application of this method is mostly limited to the gray-scale images since the integration of multi-channel data is not straightforward; it involves much higher dimensional space and causes additional difficulty to manage data in general. We propose an efficient background modeling and subtraction algorithm using 2-Dimensional Principal Component Analysis (2DPCA) [1], where multi-channel data are naturally integrated in eigenbackground framework [2] with no additional dimensionality. It is shown that the principal components in 2DPCA are computed efficiently by transformation to standard PCA. We also propose an incremental algorithm to update eigenvectors to handle temporal variations of background. The proposed algorithm is applied to 3-channel (RGB) and 4-channel (RGB+IR) data, and compared with standard subspace-based as well as pixel-wise density-based method.
机译:由于其低计算成本,使用子空间的背景建模和减法在实时计算机视觉应用中具有吸引力。然而,该方法的应用主要限于灰度图像,因为多通道数据的集成并不简单;它涉及更高的尺寸空间,并导致额外的难以管理数据。我们使用二维主成分分析(2DPCA)[1]提出了一种有效的背景建模和减法算法,其中多通道数据在特征架框架[2]中自然集成,没有额外的维度。结果表明,2DPCA中的主要成分通过转换为标准PCA有效地计算。我们还提出了一种增量算法来更新特征向量以处理背景的时间变体。所提出的算法应用于3通道(RGB)和4通道(RGB + IR)数据,并与基于标准子空间的和基于像素的密度的方法进行比较。

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