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(Legacy) Convergence Research Center for Future Automotive Technology
2. Conference Papers
Co-Occurrence Matrix Analysis-Based Semi-Supervised Training for Object Detection
Choi, Min-Kook
;
Park, Jae Hyeong
;
Jeong, Ji Hoon
;
Jung, Heechul
;
Lee, Jin-Hee
;
Won, Woong Jae
;
Jung, Woo Young
;
Kim, Jincheol
;
Kwon, Soon
Division of Mobility Technology
2. Conference Papers
(Legacy) Convergence Research Center for Future Automotive Technology
2. Conference Papers
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Title
Co-Occurrence Matrix Analysis-Based Semi-Supervised Training for Object Detection
Issued Date
2018-10-08
Citation
Choi, Min-Kook. (2018-10-08). Co-Occurrence Matrix Analysis-Based Semi-Supervised Training for Object Detection. 2018 IEEE International Conference on Image Processing, 1333–1337. doi: 10.1109/ICIP.2018.8451360
Type
Conference Paper
ISBN
9781479970612
ISSN
1522-4880
Abstract
One of the most important factors in training object recognition networks using convolutional neural networks (CNN) is the provision of annotated data accompanying human judgment. Particularly, in object detection or semantic segmentation, the annotation process requires considerable human effort. In this paper, we propose a semi-supervised learning (SSL)-based training methodology for object detection, which makes use of automatic labeling of un-annotated data by applying a network previously trained from an annotated dataset. Because an inferred label by the trained network is dependent on the learned parameters, it is often meaningless for re-training the network. To transfer a valuable inferred label to the unlabeled data, we propose a re-alignment method based on co-occurrence matrix analysis that takes into account one-hot-vector encoding of the estimated label and the correlation between the objects in the image. We used an MS-COCO detection dataset to verify the performance of the proposed SSL method and deformable neural networks (D-ConvNets) [1] as an object detector for basic training. The performance of the existing state-of-the-art detectors (D-ConvNets, YOLO v2 [2], and single shot multi-box detector (SSD) [3]) can be improved by the proposed SSL method without using the additional model parameter or modifying the network architecture. © 2018 IEEE.
URI
http://hdl.handle.net/20.500.11750/46988
DOI
10.1109/ICIP.2018.8451360
Publisher
IEEE Signal Processing Society
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