Documents
Poster
Poster
IMPROVING PROPOSAL-BASED OBJECT DETECTION USING CONVOLUTIONAL CONTEXT FEATURES
- Citation Author(s):
- Submitted by:
- emre can kaya
- Last updated:
- 7 October 2018 - 2:01pm
- Document Type:
- Poster
- Document Year:
- 2018
- Event:
- Presenters:
- A. Aydın Alatan
- Paper Code:
- 2673
- Categories:
- Keywords:
- Log in to post comments
A novel extension to proposal-based detection is proposed in order to learn convolutional context features for determining boundaries of objects better. Objects and their context are aimed to be learned through parallel convolutional stages. The resulting object and context feature maps are combined in such a way that they preserve their spatial relationship. The proposed algorithm is trained and evaluated on PASCAL VOC 2007 detection benchmark dataset and yielded improvements in performance over baseline, for all classes, especially the ones with distinctive context.