智能手机上绿豆分类的ML算法实现

M. Shahid, Kashif Munir, Salman Muneer, Mutiullah, M. Jarrah, Umer Farooq
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引用次数: 9

摘要

这项工作是我的工作的延伸,我提出了一种基于定量参数的四种绿豆品种的稳健和经济有效的鉴别方法。由于技术的进步,用户每天都在尝试使用智能手机找到解决日常生活问题的方法,但智能手机中关于计算能力和内存的可用资源仍然有限,因此需要找到最好的分类器,该分类器可以使用先前工作中已经建议的功能,以最小的内存要求和计算能力对绿豆进行分类。为了实现本研究的目标,我们在各种结构和计算简单的监督分类器上进行了实验,并在最相关的10个建议特征上给出了鲁棒性能,这些特征是由Fisher协效、误差概率、互信息和小波特征选择的。经过分析,我们用这样一个分类器代替人工神经网络和深度学习,它给出了与上述分类器大致相同的分类结果,但在资源和时间复杂度方面是有效的。这个分类器很容易在智能手机环境中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of ML Algorithm for Mung Bean Classification using Smart Phone
This work is an extension of my work presented a robust and economically efficient method for the discrimination of four Mung-Beans varieties based on quantitative parameters, Due to the advancement of technology day by day users try to find the solutions to their daily life problems using smartphones but still there is limited resources are available in smartphone concerning computing power and memory so there is need to find the best classifier which can classify the Mung-Beans using already suggested features in previous work with minimum memory requirements and computational power. For achieving the goal of this study, we take the experiments on various supervised classifiers which have simple architecture and calculations and give the robust performance on the most relevant 10 suggested features are selected by Fisher Co-efficient, Probability of Error, Mutual Information, and wavelet features. After the analysis, we replace the Artificial Neural Network and Deep learning with such a classifier which gives approximately the same classification results as the above classifier but is efficient in terms of resources and time complexity. This classifier is easily implemented in the smartphone environment.
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