Article ID Journal Published Year Pages File Type
6952902 Journal of the Franklin Institute 2018 23 Pages PDF
Abstract
For a trained CNN, we formulate an optimization problem to extract relevant image fractions for semantic segmentation. We try to identify a subset of pixels that contain the relevant information for the segmentation of one selected object class. In experiments on the Cityscapes dataset, we show that this is an easy way to gain valuable insight into a CNN trained for semantic segmentation. Looking at the relevant image fractions, we can identify possible limits of a trained network and draw conclusions about possible improvements.
Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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