Vegetation classification algorithm using convolutional neural network ResNet50 for vegetation mapping in Bandung district area

R. P. Astuti, Ema Rachmawati, E. Edwar, Simon Siregar, Indra Lukmana Sardi, Arfianto Fahmi, Yayan Agustian, Agus Cahya Ananda Yoga Putra, Faishal Daffa
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引用次数: 1

Abstract

Bandung District is one of crop provider for West Java Province. About 31.158,22 ha is used for crop. However, some of them are not maintained well due to lack of vegetation map information. Local authority has tried to map the vegetation in their area by using free license satellite images, and aerial images from Unmanned Aerial Vehicle (UAV). Despite both images being able to provide large plantation area images, both are unable to classify the vegetation type in those images. Telkom University with Bandung Agriculture Regional Office (Dinas Pertanian Kabupaten Bandung) has conducted joint research to develop algorithm based on 50-layer residual neural network (ResNet50) to classify the vegetation type. The input is of this algorithm is primarily aerial images are captured from different type, height, and position of crops. Seven different ResNet50 configurations have been set and simulated to classify the crop images. The result is the configuration with resized images, employing triangular policy of cyclic learning rate with rate 1.10−7 – 1.10−4 comes out as the best setup with more than 95% accuracy and relatively low loss.
基于卷积神经网络ResNet50的万隆地区植被分类算法
万隆区是西爪哇省的作物供应地之一。约31.158.22公顷用于种植作物。然而,由于缺乏植被地图信息,其中一些区域没有得到很好的维护。当地政府试图通过使用免费许可的卫星图像和无人驾驶飞行器(UAV)的航空图像来绘制该地区的植被图。尽管这两种图像都能够提供大面积的人工林图像,但都无法对这些图像中的植被类型进行分类。电信大学与万隆农业区域办事处(Dinas Pertanian Kabupaten Bandung)进行了联合研究,开发基于50层残余神经网络(ResNet50)的算法来分类植被类型。该算法的输入主要是从不同类型、高度和位置的作物上捕获的航拍图像。已经设置并模拟了七种不同的ResNet50配置来对裁剪图像进行分类。结果表明,在调整图像大小的情况下,采用循环学习率为1.10−7 ~ 1.10−4的三角形策略是最佳设置,准确率超过95%,损失相对较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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