Python implementation of
High-Speed Tracking with Kernelized Correlation Filters
J. F. Henriques, R. Caseiro, P. Martins, J. Batista
TPAMI 2015
It is translated from KCFcpp (Authors: Joao Faro, Christian Bailer, Joao F. Henriques), a C++ implementation of Kernelized Correlation Filters. Find more references and code of KCF at http://www.robots.ox.ac.uk/~joao/circulant/
- Python 2.7
- NumPy
- Numba (needed if you want to use the hog feature)
- OpenCV (ensure that you can
import cv2
in python)
Actually, I have installed Anaconda(for Python 2.7), and OpenCV 3.1(from opencv.org).
Download the sources and execute
git clone https://github.com/uoip/KCFpy.git
cd KCFpy
python run.py
It will open the default camera of your computer, you can also open a different camera or a video
python run.py 2
python run.py ./test.avi
Try different options (hog/gray, fixed/flexible window, singlescale/multiscale) of KCF tracker by modifying the arguments in line tracker = kcftracker.KCFTracker(False, True, False) # hog, fixed_window, multiscale
in run.py.
I have struggled to make this python implementation as fast as possible, but it's still 2 ~ 3 times slower than its C++ counterpart, furthermore, the use of Numba introduce some unpleasant delay when initializing tracker (NEW: the problem has been solved in KCFnb by using AOT compilation).
NEWER: I write a python wrapper for KCFcpp, see KCFcpp-py-wrapper, so we can benefit from C++'s speed in python now.