Jiaxin Xu, Xuetian Wang, Hongmin Gao, Ziming Zhai, Runchao Li
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引用次数: 0
摘要
基于光谱传感与分析技术,在分析不同品种、不同产地水稻光谱特征的基础上,设计开发了一套水稻品种快速识别系统,集成了光源、微型光谱传感器、硬件开发板、打印机、显示器等原装部件。采用支持向量机(SVM, support vector machine)分类器对光谱数据进行滤波分类,在设备中使用便携式光谱仪时,识别准确率达到98.41%。该系统包括软件算法设计和硬件设备开发两部分。最终系统实现了光谱数据的采集、传输、处理和存储。设计并开发了水稻品种鉴定装置的操作界面,实现了对显微光谱仪测得的光谱数据和水稻品种鉴定结果的实时显示。
Rice Identification and Classification System Based on SVM Algorithm
Based on the spectral sensing and analysis technology, we designed and developed a rapid identification system for rice varieties based on the spectral characteristics analysis of rice of different varieties and origins, and integrated original parts such as light source, miniature spectral sensor, hardware development board, printer and display. The spectral data were filtered and classified using a support vector machine (SVM, support vector machine) classifier, and the recognition accuracy reached 98.41% when using the portable spectrometer in the device. The system includes two parts: software algorithm design and hardware device development. The final system realized the acquisition, transmission, processing and storage of spectral data. The operator interface of the rice type identification device was also designed and developed for real-time display of the spectral data measured by the microspectrometer and the rice type identification results.