MeanShift++: Extremely Fast Mode-Seeking With Applications to Segmentation and Object Tracking
MeanShift is a popular mode-seeking clustering algorithm used in a wide range of applications in machine learning. However, it is known to be prohibitively slow, with quadratic runtime per iteration. We propose MeanShift++, an extremely fast mode-seeking algorithm based on MeanShift that uses a grid...
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Zusammenfassung: | MeanShift is a popular mode-seeking clustering algorithm used in a wide range
of applications in machine learning. However, it is known to be prohibitively
slow, with quadratic runtime per iteration. We propose MeanShift++, an
extremely fast mode-seeking algorithm based on MeanShift that uses a grid-based
approach to speed up the mean shift step, replacing the computationally
expensive neighbors search with a density-weighted mean of adjacent grid cells.
In addition, we show that this grid-based technique for density estimation
comes with theoretical guarantees. The runtime is linear in the number of
points and exponential in dimension, which makes MeanShift++ ideal on
low-dimensional applications such as image segmentation and object tracking. We
provide extensive experimental analysis showing that MeanShift++ can be more
than 10,000x faster than MeanShift with competitive clustering results on
benchmark datasets and nearly identical image segmentations as MeanShift.
Finally, we show promising results for object tracking. |
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DOI: | 10.48550/arxiv.2104.00303 |