READING NOTE: R-FCN: Object Detection via Region-based Fully Convolutional Networks
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转载自:
http://blog.csdn.net/joshua_1988/article/details/51484412
TITLE: R-FCN: Object Detection via Region-based Fully Convolutional Networks
AUTHER: Jifeng Dai, Yi Li, Kaiming He, Jian Sun
ASSOCIATION: MSRA, Tsinghua University
FROM: arXiv:1605.06409
CONTRIBUTIONS
- A framework called Region-based Fully Convolutional Network (R-FCN) is develpped for object detection, which consists ofshared, fully convolutional architectures.
- A set of position-sensitive score maps are introduced to enalbe FCN representing translation variance.
- A unique ROI pooling method is proposed to shepherd information from metioned score maps.
METHOD
- The image is processed by a FCN manner network.
- At the end of FCN, a RPN (Region Proposal Network) is used to generate ROIs.
- On the other hand, a score map of
k 2 (C+1) channels is generated using a bank of specialized convolutional layers.- For each ROI, a selective ROI pooling is utilized to generate a
C+1 channel score map.- The scores in the score map are averaged to vote for category.
- Another
4k 2 dim convolutional layer is learned for bounding box regression.Training Details
- R-FCN is trained end-to-end with pre-computed region proposals. Both category and position are learnt with the loss function:
L(s,t x,y,w,h )=L cls (s c ∗ )+λ[c ∗ >0]L reg (t,t ∗ ) .- For each image, N proposals are generated and B out of N proposals are selected to train weights according to the highest losses. B is set to 128 in this work.
- 4-step alternating training is utilized to realizing feature sharing between R-FCN and RPN.
ADVANTAGES
- It is fast (170ms/image, 2.5-20x faster than Faster R-CNN).
- End-to-end training is easier to process.
- All learnable layers are convolutional and shared on the entire image, yet encode spatial information required for object detection.
DISADVANTAGES
- Compared with Single Shot methods, more computation resource is needed
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