Apple Surface Defect Detection Method Based on Weight Comparison Transfer Learning with MobileNetV3

Author:

Si Haiping1,Wang Yunpeng1,Zhao Wenrui1,Wang Ming1,Song Jiazhen1,Wan Li1,Song Zhengdao1,Li Yujie1,Fernando Bacao2ORCID,Sun Changxia1

Affiliation:

1. College of Information and Management Science, Henan Agricultural University, Zhengzhou 450046, China

2. NOVA Information Management School (NOVA IMS), Universidade Nova de Lisboa, 1099-085 Lisbon, Portugal

Abstract

Apples are ranked third, after bananas and oranges, in global fruit production. Fresh apples are more likely to be appreciated by consumers during the marketing process. However, apples inevitably suffer mechanical damage during transport, which can affect their economic performance. Therefore, the timely detection of apples with surface defects can effectively reduce economic losses. In this paper, we propose an apple surface defect detection method based on weight contrast transfer and the MobileNetV3 model. By means of an acquisition device, a thermal, infrared, and visible apple surface defect dataset is constructed. In addition, a model training strategy for weight contrast transfer is proposed in this paper. The MobileNetV3 model with weight comparison transfer (Weight Compare-MobileNetV3, WC-MobileNetV3) showed a 16% improvement in accuracy, 14.68% improvement in precision, 14.4% improvement in recall, and 15.39% improvement in F1-score. WC-MobileNetV3 compared to MobileNetV3 with fine-tuning improved accuracy by 2.4%, precision by 2.67%, recall by 2.42% and F1-score by 2.56% compared to the classical neural networks AlexNet, ResNet50, DenseNet169, and EfficientNetV2. The experimental results show that the WC-MobileNetV3 model adequately balances accuracy and detection time and achieves better performance. In summary, the proposed method achieves high accuracy for apple surface defect detection and can meet the demand of online apple grading.

Funder

Henan Province Key Science-Technology Research Project

National Science and Technology Resource Sharing Service Platform Project

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

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