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- MAO Jiafeng
- Dept. of Information and Communication Eng., The University of Tokyo
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- YU Qing
- Dept. of Information and Communication Eng., The University of Tokyo
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- AIZAWA Kiyoharu
- Dept. of Information and Communication Eng., The University of Tokyo
説明
<p>Well annotated dataset is crucial to the training of object detectors. However, the production of finely annotated datasets for object detection tasks is extremely labor-intensive, therefore, cloud sourcing is often used to create datasets, which leads to these datasets tending to contain incorrect annotations such as inaccurate localization bounding boxes. In this study, we highlight a problem of object detection with noisy bounding box annotations and show that these noisy annotations are harmful to the performance of deep neural networks. To solve this problem, we further propose a framework to allow the network to modify the noisy datasets by alternating refinement. The experimental results demonstrate that our proposed framework can significantly alleviate the influences of noise on model performance.</p>
収録刊行物
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- IEICE Transactions on Information and Systems
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IEICE Transactions on Information and Systems E104.D (9), 1478-1485, 2021-09-01
一般社団法人 電子情報通信学会
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詳細情報 詳細情報について
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- CRID
- 1390289232191265920
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- NII論文ID
- 130008082148
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- ISSN
- 17451361
- 09168532
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- 本文言語コード
- en
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- 資料種別
- journal article
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- データソース種別
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- JaLC
- Crossref
- CiNii Articles
- KAKEN
- OpenAIRE
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- 抄録ライセンスフラグ
- 使用不可