嵌入
计算机科学
模式识别(心理学)
差异(会计)
人工智能
样品(材料)
对比度(视觉)
功能(生物学)
机器学习
数据挖掘
色谱法
进化生物学
生物
会计
业务
化学
作者
Yanyang Liang,Jiacong Chen,Wenlve Zhou,Ying Xu,Yikui Zhai,Ruggero Donida Labati,Vincenzo Piuri,Fabio Scotti
出处
期刊:Electronics Letters
[Institution of Engineering and Technology]
日期:2021-11-03
卷期号:58 (2): 50-52
被引量:1
摘要
Abstract As an essential element in industrial steel, automatic defect recognition can guarantee the surface quality through focused supervised learning with ample labelled samples. However, defect recognition inevitably features with data‐limiting characteristic under the influence of costly expert labelling. To address this problem, a novel framework, Instance Contrast (InCo), is proposed with the inspiration of contrastive learning. This framework consists of two streams. One with instance labels attributed to the unlabelled data in each batch for classification, which is called Batch Instance Discrimination (BID). The other with different enhanced samples embedding of the same image aggregated by a new function named dynamic weighted variance loss (DWV loss). Therefore, better semantic features can be learned by model due to the moderation of embedding distance between similar steel defect images. Experimental results on the NEU‐CLS database validate that the proposed method achieves 89.86% classification accuracy with only fine‐tuning on the 1:32 training data, outperforming other general contrastive learning methods.
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