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Weed detection in rice fields using aerial images and neural networks

机译:利用航拍图像和神经网络检测稻田杂草

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摘要

In this paper, we investigate the use of neural networks (NN) to detect weed plants in rice fields based on aerial images. For this purpose, images are taken at 50 meters high with 16.1 megapixels CMOS digital camera mount-ted on an autonomous electrical fixed wind plane. Then, an ortho-mosaic map of the field is created by stitching 250 pictures, as the image is ortho-corrected, the pixel information on the final map is more reliable for the analysis. For the NN training, Gray-Level Co-Occurrence Matrix (GCLM) with Haralicks descriptor are used for texture classification as well as Normalized Difference Index (NDI) for color. As result we have 99% precision for detection of weed on the test data, this indicates that neural networks can have a good performance on the weed detection on rice fields. For weed plants similar in form to rice plants, the level of detection was low, due to images resolution when this are taken at 50 meter high over the ground.
机译:在本文中,我们调查了基于航空图像的神经网络(NN)在稻田中检测杂草植物的应用。为此,使用安装在自主固定的固定风平面上的16.1兆像素CMOS数码相机在50米高处拍摄图像。然后,通过缝合250张图片来创建该场的正交马赛克图,因为对图像进行了正交校正,所以最终映射上的像素信息对于分析而言更加可靠。对于NN训练,将带有Haralicks描述符的灰度共现矩阵(GCLM)用于纹理分类,并将归一化差异指数(NDI)用于颜色。结果,我们在测试数据上具有99%的杂草检测精度,这表明神经网络在稻田杂草检测方面具有良好的性能。对于形式类似于水稻植物的杂草植物,由于其在地面上50米高处拍摄时的图像分辨率,其检测水平较低。

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