基于深度图像特征评估水果质量的通用机器学习模型

IF 3.1 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE AI (Basel, Switzerland) Pub Date : 2023-09-27 DOI:10.3390/ai4040041
Ioannis D. Apostolopoulos, Mpesi Tzani, Sokratis I. Aznaouridis
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引用次数: 0

摘要

水果质量是农产品行业的关键因素,影响着生产者、分销商、消费者和经济。高品质的水果更有吸引力,营养更丰富,更安全,可以提高消费者的满意度和生产者的收入。人工智能可以通过图像来帮助评估水果的质量。本文提出了一种利用深度图像特征评估水果质量的通用机器学习模型。该模型利用了最近成功的图像分类网络的学习能力,称为视觉变压器(ViT)。结合各种水果数据集构建和训练ViT模型,并根据其视觉外观而不是预定义的质量属性来区分好水果和坏水果图像。通用模型在准确识别各种水果的质量方面表现出了令人印象深刻的结果,例如苹果(准确率为99.50%)、黄瓜(99%)、葡萄(100%)、kakis(99.50%)、橙子(99.50%)、木瓜(98%)、桃子(98%)、西红柿(99.50%)和西瓜(98%)。然而,它在识别番石榴(97%)、柠檬(97%)、酸橙(97.50%)、芒果(97.50%)、梨(97%)和石榴(97%)方面的表现稍低。
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A General Machine Learning Model for Assessing Fruit Quality Using Deep Image Features
Fruit quality is a critical factor in the produce industry, affecting producers, distributors, consumers, and the economy. High-quality fruits are more appealing, nutritious, and safe, boosting consumer satisfaction and revenue for producers. Artificial intelligence can aid in assessing the quality of fruit using images. This paper presents a general machine learning model for assessing fruit quality using deep image features. This model leverages the learning capabilities of the recent successful networks for image classification called vision transformers (ViT). The ViT model is built and trained with a combination of various fruit datasets and taught to distinguish between good and rotten fruit images based on their visual appearance and not predefined quality attributes. The general model demonstrated impressive results in accurately identifying the quality of various fruits, such as apples (with a 99.50% accuracy), cucumbers (99%), grapes (100%), kakis (99.50%), oranges (99.50%), papayas (98%), peaches (98%), tomatoes (99.50%), and watermelons (98%). However, it showed slightly lower performance in identifying guavas (97%), lemons (97%), limes (97.50%), mangoes (97.50%), pears (97%), and pomegranates (97%).
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来源期刊
CiteScore
7.20
自引率
0.00%
发文量
0
审稿时长
11 weeks
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