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From Fig. 5, it can be observed that our proposed method is able to track
the right object when the car passes by. STRUCK [1] fails to track the target
object in frame 49 due to occlusion. And TLD [2] also fails to track the people in
frame 59. Note that our proposed method always tracks the right target because
we use sub-blocks to learn each samples and hence is able to identify the right
object even when occlusion happens.
4Conluon
We presented a novel object detection and tracking method with structured
output SVM. An adaptive tracking-by-detection based on structured output
prediction had been perform to do the object tracking task. The experimental
results verified that our proposed method outperforms the other two state-of-
the-art tracking-by-detection approaches.
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