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# Copyright 2020 The HuggingFace Datasets Authors and the current dataset script contributor. | |
# | |
# Licensed under the Apache License, Version 2.0 (the "License"); | |
# you may not use this file except in compliance with the License. | |
# You may obtain a copy of the License at | |
# | |
# http://www.apache.org/licenses/LICENSE-2.0 | |
# | |
# Unless required by applicable law or agreed to in writing, software | |
# distributed under the License is distributed on an "AS IS" BASIS, | |
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | |
# See the License for the specific language governing permissions and | |
# limitations under the License. | |
import evaluate | |
import datasets | |
import motmetrics as mm | |
import numpy as np | |
_CITATION = """\ | |
@InProceedings{huggingface:module, | |
title = {A great new module}, | |
authors={huggingface, Inc.}, | |
year={2020} | |
}\ | |
@article{milan2016mot16, | |
title={MOT16: A benchmark for multi-object tracking}, | |
author={Milan, Anton and Leal-Taix{\'e}, Laura and Reid, Ian and Roth, Stefan and Schindler, Konrad}, | |
journal={arXiv preprint arXiv:1603.00831}, | |
year={2016} | |
} | |
""" | |
_DESCRIPTION = """\ | |
The MOT Metrics module is designed to evaluate multi-object tracking (MOT) | |
algorithms by computing various metrics based on predicted and ground truth bounding | |
boxes. It serves as a crucial tool in assessing the performance of MOT systems, | |
aiding in the iterative improvement of tracking algorithms.""" | |
_KWARGS_DESCRIPTION = """ | |
Calculates how good are predictions given some references, using certain scores | |
Args: | |
predictions: list of predictions to score. Each predictions | |
should be a string with tokens separated by spaces. | |
references: list of reference for each prediction. Each | |
reference should be a string with tokens separated by spaces. | |
max_iou (`float`, *optional*): | |
If specified, this is the minimum Intersection over Union (IoU) threshold to consider a detection as a true positive. | |
Default is 0.5. | |
Returns: | |
summary: pandas.DataFrame with the following columns: | |
- idf1 (IDF1 Score): The F1 score for the identity assignment, computed as 2 * (IDP * IDR) / (IDP + IDR). | |
- idp (ID Precision): Identity Precision, representing the ratio of correctly assigned identities to the total number of predicted identities. | |
- idr (ID Recall): Identity Recall, representing the ratio of correctly assigned identities to the total number of ground truth identities. | |
- recall: Recall, computed as the ratio of the number of correctly tracked objects to the total number of ground truth objects. | |
- precision: Precision, computed as the ratio of the number of correctly tracked objects to the total number of predicted objects. | |
- num_unique_objects: Total number of unique objects in the ground truth. | |
- mostly_tracked: Number of objects that are mostly tracked throughout the sequence. | |
- partially_tracked: Number of objects that are partially tracked but not mostly tracked. | |
- mostly_lost: Number of objects that are mostly lost throughout the sequence. | |
- num_false_positives: Number of false positive detections (predicted objects not present in the ground truth). | |
- num_misses: Number of missed detections (ground truth objects not detected in the predictions). | |
- num_switches: Number of identity switches. | |
- num_fragmentations: Number of fragmented objects (objects that are broken into multiple tracks). | |
- mota (MOTA - Multiple Object Tracking Accuracy): Overall tracking accuracy, computed as 1 - ((num_false_positives + num_misses + num_switches) / num_unique_objects). | |
- motp (MOTP - Multiple Object Tracking Precision): Average precision of the object localization, computed as the mean of the localization errors of correctly detected objects. | |
- num_transfer: Number of track transfers. | |
- num_ascend: Number of ascended track IDs. | |
- num_migrate: Number of track ID migrations. | |
Examples: | |
>>> import numpy as np | |
>>> module = evaluate.load("bascobasculino/mot-metrics") | |
>>> predicted =[ | |
[1,1,10,20,30,40,0.85], | |
[1,2,50,60,70,80,0.92], | |
[1,3,80,90,100,110,0.75], | |
[2,1,15,25,35,45,0.78], | |
[2,2,55,65,75,85,0.95], | |
[3,1,20,30,40,50,0.88], | |
[3,2,60,70,80,90,0.82], | |
[4,1,25,35,45,55,0.91], | |
[4,2,65,75,85,95,0.89] | |
] | |
>>> ground_truth = [ | |
[1, 1, 10, 20, 30, 40], | |
[1, 2, 50, 60, 70, 80], | |
[1, 3, 85, 95, 105, 115], | |
[2, 1, 15, 25, 35, 45], | |
[2, 2, 55, 65, 75, 85], | |
[3, 1, 20, 30, 40, 50], | |
[3, 2, 60, 70, 80, 90], | |
[4, 1, 25, 35, 45, 55], | |
[5, 1, 30, 40, 50, 60], | |
[5, 2, 70, 80, 90, 100] | |
] | |
>>> predicted = [np.array(a) for a in predicted] | |
>>> ground_truth = [np.array(a) for a in ground_truth] | |
>>> results = module._compute(predictions=predicted, references=ground_truth, max_iou=0.5) | |
>>> print(results) | |
{'idf1': 0.8421052631578947, 'idp': 0.8888888888888888, 'idr': 0.8, 'recall': 0.8, 'precision': 0.8888888888888888, | |
'num_unique_objects': 3,'mostly_tracked': 2, 'partially_tracked': 1, 'mostly_lost': 0, 'num_false_positives': 1, | |
'num_misses': 2, 'num_switches': 0, 'num_fragmentations': 0, 'mota': 0.7, 'motp': 0.02981870229007634, | |
'num_transfer': 0, 'num_ascend': 0, 'num_migrate': 0} | |
""" | |
class MotMetrics(evaluate.Metric): | |
"""TODO: Short description of my evaluation module.""" | |
def _info(self): | |
# TODO: Specifies the evaluate.EvaluationModuleInfo object | |
return evaluate.MetricInfo( | |
# This is the description that will appear on the modules page. | |
module_type="metric", | |
description=_DESCRIPTION, | |
citation=_CITATION, | |
inputs_description=_KWARGS_DESCRIPTION, | |
# This defines the format of each prediction and reference | |
features=datasets.Features({ | |
"predictions": datasets.Sequence( | |
datasets.Sequence(datasets.Value("float")) | |
), | |
"references": datasets.Sequence( | |
datasets.Sequence(datasets.Value("float")) | |
) | |
}), | |
# Additional links to the codebase or references | |
codebase_urls=["http://github.com/path/to/codebase/of/new_module"], | |
reference_urls=["http://path.to.reference.url/new_module"] | |
) | |
def _download_and_prepare(self, dl_manager): | |
"""Optional: download external resources useful to compute the scores""" | |
# TODO: Download external resources if needed | |
pass | |
def _compute(self, predictions, references, max_iou: float = 0.5): | |
"""Returns the scores""" | |
# TODO: Compute the different scores of the module | |
return calculate(predictions, references, max_iou) | |
def calculate(predictions, references, max_iou: float = 0.5): | |
"""Returns the scores""" | |
try: | |
np_predictions = np.array(predictions) | |
except: | |
raise ValueError("The predictions should be a list of np.arrays in the format [frame number, object id, bb_left, bb_top, bb_width, bb_height, confidence]") | |
try: | |
np_references = np.array(references) | |
except: | |
raise ValueError("The references should be a list of np.arrays in the format [frame number, object id, bb_left, bb_top, bb_width, bb_height]") | |
if np_predictions.shape[1] != 7: | |
raise ValueError("The predictions should be a list of np.arrays in the format [frame number, object id, bb_left, bb_top, bb_width, bb_height, confidence]") | |
if np_references.shape[1] != 6: | |
raise ValueError("The references should be a list of np.arrays in the format [frame number, object id, bb_left, bb_top, bb_width, bb_height]") | |
if np_predictions[:, 0].min() <= 0: | |
raise ValueError("The frame number in the predictions should be a positive integer") | |
if np_references[:, 0].min() <= 0: | |
raise ValueError("The frame number in the references should be a positive integer") | |
num_frames = max(np_references[:, 0].max(), np_predictions[:, 0].max()) | |
acc = mm.MOTAccumulator(auto_id=True) | |
for i in range(1, num_frames+1): | |
preds = np_predictions[np_predictions[:, 0] == i, 1:6] | |
refs = np_references[np_references[:, 0] == i, 1:6] | |
C = mm.distances.iou_matrix(refs[:,1:], preds[:,1:], max_iou = max_iou) | |
acc.update(refs[:,0].astype('int').tolist(), preds[:,0].astype('int').tolist(), C) | |
mh = mm.metrics.create() | |
summary = mh.compute(acc).to_dict() | |
for key in summary: | |
summary[key] = summary[key][0] | |
return summary | |