Biswajit Bose, Xiaogang Wang and Eric Grimson,
"Multi-class object tracking algorithm that handles fragmentation and grouping," to appear in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Minneapolis, USA, June 2007.
"Multi-class object tracking algorithm that handles fragmentation and grouping," to appear in Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Minneapolis, USA, June 2007.
Abstract:
We propose a framework for detecting and tracking multiple interacting objects, while explicitly handling the dual problems of fragmentation (an object may be broken into several blobs) and grouping (multiple objects may appear as a single blob). We use foreground blobs obtained by background subtraction from a stationary camera as measurements. The main challenge is to associate blob measurements with objects, given the fragment-object-group ambiguity when the number of objects is variable and unknown, and object-class-specific models are not available. We first track foreground blobs till they merge or split. We then build an inference graph representing merge-split relations between the tracked blobs. Using this graph and a generic object model based on spatial connectedness and coherent motion, we label the tracked blobs as whole objects, fragments of objects or groups of interacting objects. The outputs of our algorithm are entire tracks of objects, which may include corresponding tracks from groups during interactions. Experimental results on multiple video sequences are shown.
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