基于ResNet深度学习模型的开心果图像分类

Emre Avuçlu
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引用次数: 0

摘要

开心果如今在世界上许多地方都有种植,在农业经济中占有重要地位。为了保持这一经济价值,收获后的工业分类过程对于从收获中获得效率是非常重要的。在分离开心果的过程中,为了使不同的开心果品种迎合不同的市场,需要一个有效的分类过程。因此,开心果的分类过程非常重要。本研究采用ResNet架构对2148张开心果图像进行Kirmizi和Siirt分类。经过统计实验研究,fold-1的分类准确率最高,为88.5781%,分类处理后的准确率值为0.86168。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Of Pistachio Images With The ResNet Deep Learning Model
Pistachio, which is grown in many parts of the world today, has an important place in the agricultural economy. In order to maintain this economic value, the post-harvest industrial classification process is very important to obtain efficiency from this harvest. In the process of separating pistachios, an efficient classification process is needed in order for different pistachio species to appeal to different markets. For this reason, the classification process of pistachios is very important. In this study, Kirmizi and Siirt pistachio classification with 2148 images was made using ResNet architecture. After the statistical experimental studies, the highest classification accuracy was obtained from fold-1 as 88.5781% and the Accuracy value was 0.86168 after the classification process.
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