• Microelectronics
  • Vol. 52, Issue 5, 898 (2022)
ZHAO Zhigang
Author Affiliations
  • [in Chinese]
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    DOI: 10.13911/j.cnki.1004-3365.220274 Cite this Article
    ZHAO Zhigang. Study on Advanced Semantic Information-Aided Pedestrian Detection Without Anchors[J]. Microelectronics, 2022, 52(5): 898 Copy Citation Text show less
    References

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    ZHAO Zhigang. Study on Advanced Semantic Information-Aided Pedestrian Detection Without Anchors[J]. Microelectronics, 2022, 52(5): 898
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