Contextualizing Object Detection and Classification

@article{Chen2015ContextualizingOD,
  title={Contextualizing Object Detection and Classification},
  author={Qiang Chen and Zheng Song and Jian Dong and ZhongYang Huang and Yang Hua and Shuicheng Yan},
  journal={IEEE transactions on pattern analysis and machine intelligence},
  year={2015},
  volume={37 1},
  pages={
          13-27
        }
}
We investigate how to iteratively and mutually boost object classification and detection performance by taking the outputs from one task as the context of the other one. While context models have been quite popular, previous works mainly concentrate on co-occurrence relationship within classes and few of them focus on contextualization from a top-down perspective, i.e. high-level task context. In this paper, our system adopts a new method for adaptive context modeling and iterative boosting… CONTINUE READING
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