Jiali Ding
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Papers from this author
Visual Saliency Oriented Vehicle Scale Estimation
Qixin Chen, Tie Liu, Jiali Ding, Zejian Yuan, Yuanyuan Shang
Auto-TLDR; Regularized Intensity Matching for Vehicle Scale Estimation with salient object detection
Abstract Slides Poster Similar
Vehicle scale estimation with a single camera is a typical application for intelligent transportation and it faces the challenges from visual computing while intensity-based method and descriptor-based method should be balanced. This paper proposed a vehicle scale estimation method based on salient object detection to resolve this problem. The regularized intensity matching method is proposed in Lie Algebra to achieve robust and accurate scale estimation, and descriptor matching and intensity matching are combined to minimize the proposed loss function. The visual attention mechanism is designed to select image patches with texture and remove the occluded image patches. Then the weights are assigned to pixels from the selected image patches which alleviates the influence of noise-corrupted pixels. The experiments show that the proposed method significantly outperforms state-of-the-art methods with regard to the robustness and accuracy of vehicle scale estimation.