计算机科学 ›› 2025, Vol. 52 ›› Issue (11A): 241200124-6.doi: 10.11896/jsjkx.241200124
罗其锋1, 肖星1, 温焯飞1, 池明旻2, 彭博3
LUO Qifeng1, XIAO Xing1, WEN Chaofei1, CHI Mingmin2, PENG Bo3
摘要: 有监督异常检测因其精准的工业异常检测能力而广泛应用于布匹质量检测。现有的统一架构的异常检测方法,因其单一的特征适配能力,不能对多样化的,所以度较高的布匹瑕疵进行有效地区分,因此在布匹的多类别的异常检测中性能会显著下降。为此提出一种基于混合区域匹配专家适配方法(Mixture of Region Experts),通过Mixture of Adapter Experts模块来区别化不同类别的布匹瑕疵特征,使用Align and Differencing模块对齐模板图特征和瑕疵特征来进一步加强异常区域的划分,从而有效提高了模型分辨复杂多类型的布匹瑕疵的能力。同时,模型进一步集成成分检测任务,在完成瑕疵定位的基础上实现异常成分的语义识别。实验结果表明,SAM-MR在布匹纤维材质和缺陷检测任务上取得了优于现有方法的性能,定性、定量分析及消融实验验证了所提出方法在多任务预测中的有效性。
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