Cylindrical Convolutional Networks for Joint Object Detection and Viewpoint Estimation
- Authors
- Sunghun Jung; Seungryong Kim; HanJae Kim; Minsu Kim; KIM, IG JAE; Junghyun Cho; Kwanghoon Sohn
- Issue Date
- 2020-06
- Publisher
- CPS
- Citation
- 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition
- Abstract
- Existing techniques to encode spatial invariance within deep convolutional neural networks only model 2D transformation fields. This does not account for the fact that objects in a 2D space are a projection of 3D ones, and thus they have limited ability to severe object viewpoint changes. To overcome this limitation, we introduce a learnable module, cylindrical convolutional networks (CCNs), that exploit cylindrical representation of a convolutional kernel defined in the 3D space. CCNs extract a view-specific feature through a view-specific convolutional kernel to predict object category scores at each viewpoint. With the view-specific feature, we simultaneously determine objective category and viewpoints using the proposed sinusoidal soft-argmax module. Our experiments demonstrate the effectiveness of the cylindrical convolutional networks on joint object detection and viewpoint estimation.
- Keywords
- object detection; deep learning; viewpoint estimation; Cylindrical convolution network
- ISSN
- -
- URI
- https://pubs.kist.re.kr/handle/201004/77924
- Appears in Collections:
- KIST Conference Paper > 2020
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