Optimization Strategy on Deep Learning Model to Improve Fruit Freshness Recognition

I Gusti Agung Indrawan, Putu Andy Novit Pranartha, I Wayan Agus Surya Darma, Ni Putu Sutramiani, I Putu Eka Giri Gunawan
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Abstract

The high fruit production during the harvest season is a challenge in the process of sorting fresh fruit and rotten fruit in plantations. Automatic fruit freshness classification based on deep learning can speed up the sorting process. However, building a model with high accuracy requires the right strategy based on the dataset's characteristics. This research aims to apply optimization strategies to deep learning models to improve model performance. The optimization strategy is implemented by optimizing the model using fine-tuning strategy by selecting the best parameters based on learning rate, optimizers, transfer learning, and data augmentation. The transfer learning process is applied based on the dataset's characteristics by training some parameters with a size of 30% and 60%, which were tested in four scenarios. The fine-tuning strategy is applied to three Deep Learning models, i.e., MobileNetv2, ResNet50, and InceptionResNetV2, which have various parameter sizes. Based on test results, fine-tuning strategy produces the best performance up to 100% with a learning rate of 0.01, the SGD optimizers on the InceptionResNetV2 model are trained on 60% of the parameters.
基于深度学习模型的水果新鲜度识别优化策略
收获季节果实产量高,是果园新鲜水果和腐烂水果分拣过程中的一大挑战。基于深度学习的水果新鲜度自动分类可以加快分拣过程。然而,建立一个高精度的模型需要根据数据集的特征选择正确的策略。本研究旨在将优化策略应用于深度学习模型,以提高模型的性能。该优化策略通过基于学习率、优化器、迁移学习和数据增强选择最佳参数的微调策略来优化模型。基于数据集的特征,通过训练30%和60%大小的参数来应用迁移学习过程,并在四个场景中进行了测试。将微调策略应用于三个具有不同参数大小的深度学习模型,即MobileNetv2, ResNet50和InceptionResNetV2。根据测试结果,微调策略以0.01的学习率产生高达100%的最佳性能,在InceptionResNetV2模型上的SGD优化器在60%的参数上进行了训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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14
审稿时长
24 weeks
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