Moving Object Detection under Discontinuous Change in Illumination Using Tensor Low-Rank and Invariant Sparse Decomposition
Although low-rank and sparse decomposition based methods have been successfully applied to the problem of moving object detection using structured sparsity-inducing norms, they are still vulnerable to significant illumination changes that arise in certain applications. We are interested in moving ob...
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Zusammenfassung: | Although low-rank and sparse decomposition based methods have been
successfully applied to the problem of moving object detection using structured
sparsity-inducing norms, they are still vulnerable to significant illumination
changes that arise in certain applications. We are interested in moving object
detection in applications involving time-lapse image sequences for which
current methods mistakenly group moving objects and illumination changes into
foreground. Our method relies on the multilinear (tensor) data low-rank and
sparse decomposition framework to address the weaknesses of existing methods.
The key to our proposed method is to create first a set of prior maps that can
characterize the changes in the image sequence due to illumination. We show
that they can be detected by a k-support norm. To deal with concurrent, two
types of changes, we employ two regularization terms, one for detecting moving
objects and the other for accounting for illumination changes, in the tensor
low-rank and sparse decomposition formulation. Through comprehensive
experiments using challenging datasets, we show that our method demonstrates a
remarkable ability to detect moving objects under discontinuous change in
illumination, and outperforms the state-of-the-art solutions to this
challenging problem. |
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DOI: | 10.48550/arxiv.1904.03175 |