基于深度学习和多季节数据库更新苹果可见光-近红外光谱成熟度分类模型

IF 4.4 1区 农林科学 Q1 AGRICULTURAL ENGINEERING
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引用次数: 0

摘要

明智地评估苹果的成熟度对于确保苹果的质量和商业价值至关重要。然而,在检测不同季节变化下的苹果光谱时,为单一季节建立的校准模型的应用存在局限性。因此,有必要对模型进行更新。在这项研究中,我们获取了一个跨越四个季节的苹果可见光和近红外光谱大数据集,并基于计算机视觉工具评估了样品的成熟度。在完成一系列数据处理和参数优化后,在初始季节数据集上建立了一维卷积神经网络。随后,利用深度迁移学习完成了季节间的模型转移。此外,在有历史数据和无历史数据的两种情况下,实现了苹果成熟度分类模型的多季节模型更新。结果表明,通过重新训练网络的卷积层,三个新季节的分类准确率分别提高了 4%、18% 和 15%,而原有季节的分类准确率保持稳定。将 5%-20%的新季节样本与累积历史数据相结合,模型的分类性能在两个新季节分别提高了 54% 和 55%。这项研究有助于更新用于水果质量控制的多季节光谱数据库模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Updating apple Vis-NIR spectral ripeness classification model based on deep learning and multi-seasonal database

Updating apple Vis-NIR spectral ripeness classification model based on deep learning and multi-seasonal database

Judicious assessment of ripeness is crucial for ensuring the quality and commercial value of apples. However, when it comes to detecting apples spectrally under different seasonal variations, there are limitations in the application of calibration models that are built for a single season. Therefore, it is necessary to implement model updating. In this study, a large dataset was acquired of apple visible and near-infrared spectra spanning four seasons and assessed the ripeness of the samples based on computer vision tools. After completing a series of data processing and parameter optimisation, a one-dimensional convolution neural network was built on the initial seasonal dataset. Subsequently, model transfer between seasons was completed using deep transfer learning. Further, multi-seasonal model updating of apple ripeness classification models was achieved in two scenarios with and without historical data. The results indicated that by retraining the network’s convolution layer, the classification accuracies for the three new seasons improved by 4%, 18%, and 15% respectively, while remaining stable for the original season. Combining 5%–20% new season samples with cumulative historical data, the model’s classification performance improves by up to 54% and 55% on the two new seasons. This study contributes to the updating of the multi-seasonal spectral database model for fruit quality control.

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来源期刊
Biosystems Engineering
Biosystems Engineering 农林科学-农业工程
CiteScore
10.60
自引率
7.80%
发文量
239
审稿时长
53 days
期刊介绍: Biosystems Engineering publishes research in engineering and the physical sciences that represent advances in understanding or modelling of the performance of biological systems for sustainable developments in land use and the environment, agriculture and amenity, bioproduction processes and the food chain. The subject matter of the journal reflects the wide range and interdisciplinary nature of research in engineering for biological systems.
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