DA-FSOD: A Novel Data Augmentation Scheme for Few-Shot Object Detection
Deep learning techniques continue to be used in various applications in recent years. However, when it is difficult to obtain adequate training samples, the performance of the depth model will degrade. Although few-shot learning and data enhancement techniques can relieve this dilemma, the diversity...
Päätekijät: | Jian Yao, Tianyun Shi, Xiaoping Che, Jie Yao, Liuyi Wu |
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Aineistotyyppi: | Artikkeli |
Kieli: | English |
Julkaistu: |
IEEE
2023-01-01
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Sarja: | IEEE Access |
Aiheet: | |
Linkit: | https://ieeexplore.ieee.org/document/10227279/ |
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