- This approach is used to get region proposals in Fast-RCNN.
- for more detail
- Windows 10
- Python 3.6
1. Selective Search uses graph-based image segmentation to get initial regions, first.
In my practice, I just used the function of graph-based image segmentation in openCV.
2. Calculate similarities between each neighboring region.
Following are 4 similarity approaches in this paper.
A. color similarity:
In order to measure the similarity in color, this approach can measure color distribution
of each region.
Calculate color histogram of each region, than sum up the minimize interval between both
neighboring regions.
We can easily get the color similarity after merge two region by using following algorithm.
B. texture similarity:
Similar objects have more similar texture features, so we measure the texture similarities
between each neighboring region to merge complete object.
In this paper, they use SIFT to get image textures.
In my practice, I used LBP instead.
C. size similarity:
To avoid all regions be merged by a big region.
D. fill similarity:
Merge the regions which has the least hole after merging.
Following are two bounding boxes with same widths and heights, show what is the least hole.
3. Merge the highest similarity of two regions, iteratively.