TY - JOUR
T1 - GroupNet
T2 - Learning to group corner for object detection in remote sensing imagery
AU - NI, Lei
AU - HUO, Chunlei
AU - ZHANG, Xin
AU - WANG, Peng
AU - ZHOU, Zhixin
N1 - Publisher Copyright:
© 2021
PY - 2022/6
Y1 - 2022/6
N2 - Due to the attractive potential in avoiding the elaborate definition of anchor attributes, anchor-free-based deep learning approaches are promising for object detection in remote sensing imagery. CornerNet is one of the most representative methods in anchor-free-based deep learning approaches. However, it can be observed distinctly from the visual inspection that the CornerNet is limited in grouping keypoints, which significantly impacts the detection performance. To address the above problem, a novel and effective approach, called GroupNet, is presented in this paper, which adaptively groups corner specific to the objects based on corner embedding vector and corner grouping network. Compared with the CornerNet, the proposed approach is more effective in learning the semantic relationship between corners and improving remarkably the detection performance. On NWPU dataset, experiments demonstrate that our GroupNet not only outperforms the CornerNet with an AP of 12.8%, but also achieves comparable performance to considerable approaches with 83.4% AP.
AB - Due to the attractive potential in avoiding the elaborate definition of anchor attributes, anchor-free-based deep learning approaches are promising for object detection in remote sensing imagery. CornerNet is one of the most representative methods in anchor-free-based deep learning approaches. However, it can be observed distinctly from the visual inspection that the CornerNet is limited in grouping keypoints, which significantly impacts the detection performance. To address the above problem, a novel and effective approach, called GroupNet, is presented in this paper, which adaptively groups corner specific to the objects based on corner embedding vector and corner grouping network. Compared with the CornerNet, the proposed approach is more effective in learning the semantic relationship between corners and improving remarkably the detection performance. On NWPU dataset, experiments demonstrate that our GroupNet not only outperforms the CornerNet with an AP of 12.8%, but also achieves comparable performance to considerable approaches with 83.4% AP.
KW - CornerNet
KW - Feature representation
KW - Multi-dimension embedding
KW - Object detection
KW - Remote sensing
UR - https://www.scopus.com/pages/publications/85123820494
U2 - 10.1016/j.cja.2021.09.016
DO - 10.1016/j.cja.2021.09.016
M3 - Article
AN - SCOPUS:85123820494
SN - 1000-9361
VL - 35
SP - 273
EP - 284
JO - Chinese Journal of Aeronautics
JF - Chinese Journal of Aeronautics
IS - 6
ER -