Semantic context and depth-aware object proposal generation
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Zhang, Haoyang
He, Xuming
Porikli, Fatih
Kneip, Laurent
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IEEE
Abstract
This paper presents a context-aware object proposal generation method for stereo images. Unlike existing methods which mostly rely on image-based or depth features to generate object candidates, we propose to incorporate additional geometric and high-level semantic context information into the proposal generation. Our method starts from an initial object proposal set, and encode objectness for each proposal using three types of features , including a CNN feature, a geometric feature computed from dense depth map, and a semantic context feature from pixel-wise scene labeling. We then train an efficient random forest classifier to re-rank the initial proposals and a set of linear regressors to fine-tune the location of each proposal. Experiments on the KITTI dataset show our approach significantly improves the quality of the initial proposals and achieves the state-of-the-art performance using only a fraction of original object candidates.
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Yuantian Wang, Lei Huang, Tongwei Ren, Sheng-Hua Zhong, Yan Liu, Gangshan Wu, Advances in Multimedia Information Processing – PCM 2017, vol.10736, pp.34, 2018
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IEEE International Conference on Image Processing
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Restricted until
2099-12-31