Palm Trees Counting Using MobileNet Convolutional Neural Network in Very High-Resolution Satellite Images

Y. Prabowo, K. A. Pradono, Qonita Amriyah, Fadillah Halim Rasyidy, I. Carolita, A. Setiyoko, D. S. Candra, Musyarofah, K. Ulfa, Y. F. Hestrio
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Abstract

Indonesia has a large area of oil palm plantation. Information related to the spatial distribution and number of palm trees is essential for oil palm plantation management and monitoring. The common standard of monitoring the number of oil palm trees has been either manually counting at the plantation itself or from the given aerial images. Manual counting requires many workers and has potential problems related to accuracy. This article presents an approach to the extraction and counting of oil palm trees using deep learning approach. We investigate the use of MobileNet-v1 to detect the individual palm trees from very high-resolution satellite images. MobileNet-v1 is a lightweight CNN architecture model that is usually used on smartphones or other devices with limited processing resources. The network was trained with the dataset that contains 3500 small images of size $25\times 25$ pixels. The result shows that this method managed to detect oil palm trees with the precision, recall and F1 score more than 0.9.
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在高分辨率卫星图像中使用MobileNet卷积神经网络进行棕榈树计数
印度尼西亚有大面积的油棕种植园。与棕榈树的空间分布和数量有关的信息对油棕种植园的管理和监测至关重要。监测油棕树数量的通用标准要么是在种植园手工计数,要么是根据给定的航空图像。人工计数需要许多工人,并且存在与准确性相关的潜在问题。本文提出了一种利用深度学习方法对油棕树进行提取和计数的方法。我们研究了使用MobileNet-v1从高分辨率卫星图像中检测单个棕榈树的方法。MobileNet-v1是一个轻量级的CNN架构模型,通常用于智能手机或其他处理资源有限的设备。该网络使用包含3500张大小为$25 × 25$像素的小图像的数据集进行训练。结果表明,该方法检测油棕树的准确率、召回率和F1值均大于0.9。
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