Benchmark:
MOT17Det |
Short name:
ACF
Description:
The detector portion of this toolbox implements the Aggregate Channel
Features (ACF) object detection code. The ACF detector is a fast and
effective sliding window detector (30 fps on a single core). It is an
evolution of the Viola & Jones (VJ) detector but with an ~1000 fold
decrease in false positives (at the same detection rate). ACF is best
suited for quasi-rigid object detection (e.g. faces, pedestrians, cars).
The detection code was written by Piotr Dollar with contributions by Ron
Appel and Woonhyun Nam (with bug reports/suggestions from many others).
Reference:
P. Dollar, R. Appel, S. Belongie, P. Perona. Fast Feature Pyramids for Object Detection. In TPAMI, 2014.
Last submitted:
February 14, 2017 (7 years ago)
Published:
February 14, 2017 at 06:29:22 CET
Submissions:
4
Project page / code:
Open source:
Yes
Hardware:
3GHz
Runtime:
74.0 Hz
Benchmark performance:
Sequence | AP | MODA | MODP | FAF | TP | FP | FN | Rcll | Prcn | F1 |
MOT17Det | 0.32 | 18.1 | 72.1 | 2.8 | 37,312 | 16,539 | 77,252 | 32.6 | 69.3 | 44.3 |
Detailed performance:
Raw data: