Augment Before Copy-Paste: Data and Memory Efficiency-Oriented Instance Segmentation Framework for Sport-scenes
- URL: http://arxiv.org/abs/2403.11572v1
- Date: Mon, 18 Mar 2024 08:44:40 GMT
- Title: Augment Before Copy-Paste: Data and Memory Efficiency-Oriented Instance Segmentation Framework for Sport-scenes
- Authors: Chih-Chung Hsu, Chia-Ming Lee, Ming-Shyen Wu,
- Abstract summary: In Visual Inductive Priors challenge (VIPriors2023), participants must train a model capable of precisely locating individuals on a basketball court.
We propose memory effIciency inStance framework based on visual inductive prior flow propagation.
Experiments demonstrate our model promising performance even under limited data and memory constraints.
- Score: 7.765333471208582
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Instance segmentation is a fundamental task in computer vision with broad applications across various industries. In recent years, with the proliferation of deep learning and artificial intelligence applications, how to train effective models with limited data has become a pressing issue for both academia and industry. In the Visual Inductive Priors challenge (VIPriors2023), participants must train a model capable of precisely locating individuals on a basketball court, all while working with limited data and without the use of transfer learning or pre-trained models. We propose Memory effIciency inStance Segmentation framework based on visual inductive prior flow propagation that effectively incorporates inherent prior information from the dataset into both the data preprocessing and data augmentation stages, as well as the inference phase. Our team (ACVLAB) experiments demonstrate that our model achieves promising performance (0.509 AP@0.50:0.95) even under limited data and memory constraints.
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