EB-UNet++: Mạng phân đoạn vết nứt nâng cao kết hợp EfficientNet-B2 và UNet++ với khối trích xuất biên
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#Pavement crack detection; Crack segmentation; Boundary extraction module (BEM); Road surface inspection; Multi-scale feature extraction.Tài liệu tham khảo
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