# 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 datetime import os import datasets import evaluate from seametrics.user_friendly.utils import calculate_from_payload import wandb _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. """ @evaluate.utils.file_utils.add_start_docstrings(_DESCRIPTION, _KWARGS_DESCRIPTION) class UserFriendlyMetrics(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, payload, max_iou: float = 0.5, filters={}, recognition_thresholds=[0.3, 0.5, 0.8], debug: bool = False, ): """Returns the scores""" # TODO: Compute the different scores of the module return dummy_values() # return calculate(predictions, references, max_iou) def dummy_values(): return { "model_1": { "overall": { "all": { "tp": 50, "fp": 20, "fn": 10, "precision": 0.71, "recall": 0.83, "f1": 0.76 }, "small": { "tp": 15, "fp": 5, "fn": 2, "precision": 0.75, "recall": 0.88, "f1": 0.81 }, "medium": { "tp": 25, "fp": 10, "fn": 5, "precision": 0.71, "recall": 0.83, "f1": 0.76 }, "large": { "tp": 10, "fp": 5, "fn": 3, "precision": 0.67, "recall": 0.77, "f1": 0.71 } }, "per_sequence": { "sequence_1": { "all": { "tp": 30, "fp": 15, "fn": 7, "precision": 0.67, "recall": 0.81, "f1": 0.73 }, "small": { "tp": 10, "fp": 3, "fn": 1, "precision": 0.77, "recall": 0.91, "f1": 0.83 }, "medium": { "tp": 15, "fp": 7, "fn": 2, "precision": 0.68, "recall": 0.88, "f1": 0.77 }, "large": { "tp": 5, "fp": 2, "fn": 1, "precision": 0.71, "recall": 0.83, "f1": 0.76 } } } }, "model_2": { "overall": { "all": { "tp": 60, "fp": 25, "fn": 15, "precision": 0.71, "recall": 0.80, "f1": 0.75 }, "small": { "tp": 20, "fp": 6, "fn": 3, "precision": 0.77, "recall": 0.87, "f1": 0.82 }, "medium": { "tp": 30, "fp": 12, "fn": 5, "precision": 0.71, "recall": 0.86, "f1": 0.78 }, "large": { "tp": 10, "fp": 7, "fn": 5, "precision": 0.59, "recall": 0.67, "f1": 0.63 } }, "per_sequence": { "sequence_1": { "all": { "tp": 40, "fp": 18, "fn": 8, "precision": 0.69, "recall": 0.83, "f1": 0.75 }, "small": { "tp": 12, "fp": 4, "fn": 2, "precision": 0.75, "recall": 0.86, "f1": 0.80 }, "medium": { "tp": 20, "fp": 8, "fn": 3, "precision": 0.71, "recall": 0.87, "f1": 0.78 }, "large": { "tp": 8, "fp": 6, "fn": 3, "precision": 0.57, "recall": 0.73, "f1": 0.64 } } } } }