An integrated approach of Active Incremental fine-tuning, SegNet, and CRF for cutting tool wearing areas segmentation with small samples
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Pingyu Jiang | Wei Guo | Huanrong Ren | Xu Wan | P. Jiang | Wei Guo | Huanrong Ren | Xu Wan
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