py-img-seg-eval
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Evaluation metrics for image segmentation inspired by paper Fully Convolutional Networks for Semantic Segmentation
Image Segmentation Evaluation
Martin Keršner, [email protected]
Evaluation metrics for image segmentation inspired by paper Fully Convolutional Networks for Semantic Segmentation.
Pixel accuracy
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Mean accuracy
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Mean IU
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Frequency Weighted IU
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Explanatory notes
- n_cl : number of classes included in ground truth segmentation
- n_ij : number of pixels of class i predicted to belong to class j
- t_i : total number of pixels of class i in ground truth segmentation