基于深度神经网络的水果自动分类系统

Khadija Munir, A. I. Umar, Waqas Yousaf
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引用次数: 2

摘要

水果分类在机器人农业中起着至关重要的作用。现在水果的采摘和包装都是用机器人完成的。这只能通过基于机器学习的高效训练机器人来实现。水果分类技术虽有发展,但在效率和准确性方面仍有很大差距。在本研究工作中,我们以分类精度为目标。本文提出了一种基于深度学习神经网络的高精度、可召回的水果自动检测工具。它将有助于农业、种植,并在机器人农业中产生声音效果。其目的是建立一个准确、快速、可靠的水果检测系统,这是自主农业机器人平台的重要组成部分;它是果实产量估算和自动收获的关键因素。我们在迁移学习中使用了ResNet-50。定义了不同的训练选择,即10%到80%。实验结果表明,即使只有10%的训练,我们也能与之前的方法竞争。与先前使用F1分数的工作相比,所提出的方法获得了最先进的结果,F1分数考虑了精度和召回性能,从0.838提高到0.894和0.995的准确性。除了提高准确性之外,与最近的方法相比,这种方法也快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Fruits Classification System Based on Deep Neural Network
Fruit classification is playing a vital role in robot-based farming. The plucking of fruits and packing is done using robots nowadays. This could only be possible using efficiently trained robots base on machine learning. Different techniques have been developed for fruit classification, but still, there are many gaps, i.e., efficiency and accuracy. In this research work, we are targeting classification accuracy. This paper presented an Automatic Fruit Detection tool with good precision and recalled using deep learning neural networks. It will help in farming, cultivation, and produce sound effects in robotic farming. The aim is to build an accurate, fast and reliable fruit detection system, a vital element of an autonomous agricultural robotic platform; it is a crucial element for fruit yield estimation and automated harvesting. We used the ResNet-50 in the context of transfer learning. Different training choices were defined, i.e., 10% to 80%. Experimental results show that we compete for the prior approaches even on only 10% training. The proposed approach achieves state-of-the-art results compared to prior work with the F1 Score, which considers both precision and recall performances improving from 0.838 to 0.894 and 0.995 of accuracy. In addition to improved accuracy, this approach is also much quicker as compared to recent approaches.
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