UPDATE:
All common tracking datasets (GOT-10k, OTB, VOT, UAV, TColor, DTB, NfS, LaSOT and TrackingNet) are supported.
Support VOT2019 (ST/LT/RGBD/RGBT) downloading.
Fix the randomness in ImageNet-VID (issue #13).
Run experimenets over common tracking benchmarks (code from siamfc):
This repository contains the official python toolkit for running experiments and evaluate performance on GOT-10k benchmark. The code is written in pure python and is compile-free. Although we support both python2 and python3, we recommend python3 for better performance.
For convenience, the toolkit also provides unofficial implementation of dataset interfaces and tracking pipelines for OTB (2013/2015), VOT (2013~2018), DTB70, TColor128, NfS (30/240 fps), UAV (123/20L), LaSOT and TrackingNet benchmarks. It also offers interfaces for ILSVRC VID and YouTube-BoundingBox (comming soon!) datasets.
GOT-10k is a large, high-diversity and one-shot database for training and evaluating generic purposed visual trackers. If you use the GOT-10k database or toolkits for a research publication, please consider citing:
@ARTICLE{8922619,
author={Huang, Lianghua and Zhao, Xin and Huang, Kaiqi},
journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
title={GOT-10k: A Large High-Diversity Benchmark for Generic Object Tracking in the Wild},
year={2021},
volume={43},
number={5},
pages={1562-1577},
doi={10.1109/TPAMI.2019.2957464}}
- Installation
- Quick Start: A Concise Example
- Quick Start: Jupyter Notebook for Off-the-Shelf Usage
- How to Define a Tracker?
- How to Run Experiments on GOT-10k?
- How to Evaluate Performance?
- How to Plot Success Curves?
- How to Loop Over GOT-10k Dataset?
- Issues
- Contributors
Install the toolkit using pip
(recommended):
pip install --upgrade got10k
Stay up-to-date:
pip install --upgrade git+https://github.com/got-10k/toolkit.git@master
Or, alternatively, clone the repository and install dependencies:
git clone https://github.com/got-10k/toolkit.git
cd toolkit
pip install -r requirements.txt
Then directly copy the got10k
folder to your workspace to use it.
Here is a simple example on how to use the toolkit to define a tracker, run experiments on GOT-10k and evaluate performance.
from got10k.trackers import Tracker
from got10k.experiments import ExperimentGOT10k
class IdentityTracker(Tracker):
def __init__(self):
super(IdentityTracker, self).__init__(name='IdentityTracker')
def init(self, image, box):
self.box = box
def update(self, image):
return self.box
if __name__ == '__main__':
# setup tracker
tracker = IdentityTracker()
# run experiments on GOT-10k (validation subset)
experiment = ExperimentGOT10k('data/GOT-10k', subset='val')
experiment.run(tracker, visualize=True)
# report performance
experiment.report([tracker.name])
To run experiments on OTB, VOT or other benchmarks, simply change ExperimentGOT10k
, e.g., to ExperimentOTB
or ExperimentVOT
, and root_dir
to their corresponding paths for this purpose.
Open quick_examples.ipynb in Jupyter Notebook to see more examples on toolkit usage.
To define a tracker using the toolkit, simply inherit and override init
and update
methods from the Tracker
class. Here is a simple example:
from got10k.trackers import Tracker
class IdentityTracker(Tracker):
def __init__(self):
super(IdentityTracker, self).__init__(
name='IdentityTracker', # tracker name
is_deterministic=True # stochastic (False) or deterministic (True)
)
def init(self, image, box):
self.box = box
def update(self, image):
return self.box
Instantiate an ExperimentGOT10k
object, and leave all experiment pipelines to its run
method:
from got10k.experiments import ExperimentGOT10k
# ... tracker definition ...
# instantiate a tracker
tracker = IdentityTracker()
# setup experiment (validation subset)
experiment = ExperimentGOT10k(
root_dir='data/GOT-10k', # GOT-10k's root directory
subset='val', # 'train' | 'val' | 'test'
result_dir='results', # where to store tracking results
report_dir='reports' # where to store evaluation reports
)
experiment.run(tracker, visualize=True)
The tracking results will be stored in result_dir
.
Use the report
method of ExperimentGOT10k
for this purpose:
# ... run experiments on GOT-10k ...
# report tracking performance
experiment.report([tracker.name])
When evaluated on the validation subset, the scores and curves will be directly generated in report_dir
.
However, when evaluated on the test subset, since all groundtruths are withholded, you will have to submit your results to the evaluation server for evaluation. The report
function will generate a .zip
file which can be directly uploaded for submission. For more instructions, see submission instruction.
See public evaluation results on GOT-10k's leaderboard.
Assume that a list of all performance files (JSON files) are stored in report_files
, here is an example showing how to plot success curves:
from got10k.experiments import ExperimentGOT10k
report_files = ['reports/GOT-10k/performance_25_entries.json']
tracker_names = ['SiamFCv2', 'GOTURN', 'CCOT', 'MDNet']
# setup experiment and plot curves
experiment = ExperimentGOT10k('data/GOT-10k', subset='test')
experiment.plot_curves(report_files, tracker_names)
The report file of 25 baseline entries can be downloaded from the Downloads page. You can also download single report file for each entry from the Leaderboard page.
The got10k.datasets.GOT10k
provides an iterable and indexable interface for GOT-10k's sequences. Here is an example:
from PIL import Image
from got10k.datasets import GOT10k
from got10k.utils.viz import show_frame
dataset = GOT10k(root_dir='data/GOT-10k', subset='train')
# indexing
img_file, anno = dataset[10]
# for-loop
for s, (img_files, anno) in enumerate(dataset):
seq_name = dataset.seq_names[s]
print('Sequence:', seq_name)
# show all frames
for f, img_file in enumerate(img_files):
image = Image.open(img_file)
show_frame(image, anno[f, :])
To loop over OTB
or VOT
datasets, simply change GOT10k
to OTB
or VOT
for this purpose.
Please report any problems or suggessions in the Issues page.