基于高光谱成像的卷积神经网络水稻生境识别系统

Zhorif Maulana Akram, A. H. Saputro
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引用次数: 1

摘要

印度尼西亚是世界上以米饭为主食的国家之一,特别是在亚洲大陆。这一现象导致水稻成为高需求的食物,并在许多地区种植。然而,栖息地水稻种植有助于大米的品质、味道和香味,从而影响特定的大米市场价格。本研究提出了一种基于米粒光谱和空间信息的米粒属性识别系统。该识别系统由工作台和从相机中计算超立方体数据的算法组成。400-1000高光谱相机记录放置在培养皿中的米粒样品。对图像进行校正和分割,生成三维图像样本作为卷积神经网络(CNN)的输入。在自编码器方法的基础上改进了CNN对水稻生境的分类。采用万隆、因德拉玛尤、苏邦、卡拉旺和巨港5种不同种植区域的水稻生境对系统性能进行了评价。共使用了480个水稻数据集来计算CNN分类模型的准确率。CNN在训练中的准确率为100%,在测试中的准确率为94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rice Grain Habitat Identification System using Convolution Neural Network on Hyperspectral Imaging
Indonesia is one of the world’s nations, specifically in the Asian continent, that consumed rice as their main dishes. This phenomenon led rice to be highly demanding food and planted in many regions. However, the habitat rice plantation contributes to the rice quality, taste, and fragrance that impact the particular rice market price. This research proposed an identification system to differentiate the rice grain properties based on the rice grain’s spectral and spatial information. The proposed identification system consists of the workbench and the algorithm that computed hyprcube data from the camera. The hyperspectral camera in the range 400-1000 records the rice grain sample placed in the petri dish. The image correction and segmentation were performed t enerate the 3D image rice sample as an input of the Convolution Neural Network (CNN). The CNN was modified from the autoencoder approach to classifying the rice habitat. Five types of rice habitat from different planting areas were used to measure the system performance, such as Bandung, Indramayu, Subang, Karawang, and Palembang. A total of 480 rice data sets were used to compute the accuracy of the CNN classification model. The accuracy of CNN is 100% at the training and 94% at the test.
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