Combining transfer learning and hyperspectral imaging to identify bruises of pears across different bruise types

点击次数:266   下载次数:0
外文摘要:Mechanical bruise is one of the most crucial factors affecting the quality of pears, which has a huge influence on postharvest transportation, storage, and sale of pears. To rapidly detect early bruises of pears across different bruise types, hyperspectral imaging technology coupled with transfer learning methods was performed in this study. Two transfer learning methods, that is, transfer component analysis (TCA) and manifold embedded distribution alignment (MEDA), were applied for two tasks (impact bruise -> crush bruise, crush bruise -> impact bruise). Supporting vector machine (SVM) was set as a baseline to conduct analysis and comparison of the transferability of the models. The result showed that, for task 1 (impact bruise -> crush bruise), MEDA and TCA-SVM model achieved a classification accuracy of 93.33% and 91.11% in target domain, individually. For task 2 (crush bruise -> impact bruise), MEDA and TCA-SVM model achieved an accuracy of 88.89% and 85.19% in target domain, respectively. Both the two models improved the accuracy compared with SVM models (84.44% for task 1; 77.04% for task 2). Overall, the results indicated that transfer learning approaches could perform pear bruise detection across different bruise types. Hyperspectral imaging in combination with transfer learning methods is a promising possibility for the efficient and cost-saving field detection of fruit bruises among different bruise types.
外文关键词:hyperspectral imaging;Transfer learning;pear;different bruise types;early bruise detection
作者:Liu, Dayang;Zhang, Huiting;Lv, Feng;Tao, Yanrong;Zhu, Liangkuan
作者单位:Northeast Forestry Univ;State Grid Siping Power Supply Co
期刊名称:JOURNAL OF FOOD SCIENCE
期刊影响因子:0.0
出版年份:2024
出版刊次:89(5)
原文传递申请:江苏省科技资源(工程技术文献)统筹服务平台

  1. 编译服务:智慧农业
  2. 编译者:虞德容
  3. 编译时间:2025-04-09