IoU 를 이용한 능동 학습의 샘플링 전략 평가방법

Authors
이정호유주한Kim, Dong Hwan
Issue Date
2023-02-17
Publisher
한국로봇학회
Citation
제18회 한국로봇종합학술대회 (KRoC 2023)
Abstract
Currently active learning is used to reduce the training data required for deep learning. In active learning, a few data are sampled from the training dataset to learn a model where the goal of sampling strategy is the sampled data to cover the distribution of the training dataset as much as possible. We propose a method for evaluating sampling strategies of the active learning in the instance segmentation task. We evaluate the sampling strategies by comparing the sampling data and its ground truth(G.T.) data with Mask IoU and Boundary IoU. It was confirmed that both evaluation methods were drawn as upward-sloping graphs as they passed through the sampling stage.
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