R-FCN-3000 at 30fps: Decoupling Detection and Classification

December 05, 2017 · Declared Dead · 🏛 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition

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Authors Bharat Singh, Hengduo Li, Abhishek Sharma, Larry S. Davis arXiv ID 1712.01802 Category cs.CV: Computer Vision Citations 97 Venue 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition Last Checked 1 month ago
Abstract
We present R-FCN-3000, a large-scale real-time object detector in which objectness detection and classification are decoupled. To obtain the detection score for an RoI, we multiply the objectness score with the fine-grained classification score. Our approach is a modification of the R-FCN architecture in which position-sensitive filters are shared across different object classes for performing localization. For fine-grained classification, these position-sensitive filters are not needed. R-FCN-3000 obtains an mAP of 34.9% on the ImageNet detection dataset and outperforms YOLO-9000 by 18% while processing 30 images per second. We also show that the objectness learned by R-FCN-3000 generalizes to novel classes and the performance increases with the number of training object classes - supporting the hypothesis that it is possible to learn a universal objectness detector. Code will be made available.
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