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A novel tree trunk detection method for oil-palm plantation navigation

机译:一种用于油棕人工林导航的新型树干检测方法

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摘要

This paper presents a novel tree trunk detection algorithm that uses the Viola and Jones detector along with a proposed pre-processing method, combined with tree trunk detection via depth information. The proposed method tackles the issue of the high false positive rate when the Viola and Jones detector is used on its own, due to the low contrast between tree trunks and the surrounding environment. The pre-processing method uses colour space combination and segmentation to eliminate the ground not covered by trees from the images and feeding the resulting image into a cascade detector for identifying the location of the trunks in the image. Depth information is obtained via the use of the Microsoft KINECT sensor to further increase the accuracy of the detector. Our proposed method had better performance when compared to both Neural Network based and Support Vector Machine based detectors with a detection rate of 91.7% and had the lowest false acceptance rate out of other detectors, including the original Viola and Jones detector. The performance of the proposed method was also tested on live video feeds with the use of a robot prototype in an oil-palm plantation, which proved the high accuracy of the method, with a 97.8% detection rate. The inclusion of depth information resulted in more accurate detections during low levels of light and at night, where reliance on pure depth information resulted in a 100% detection rate of tree trunks within the range of the sensor. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种新的树干检测算法,该算法使用Viola和Jones检测器以及一种建议的预处理方法,并结合了通过深度信息的树干检测。由于树干和周围环境之间的对比度较低,当单独使用中提琴和琼斯探测器时,该方法解决了假阳性率高的问题。预处理方法使用色彩空间组合和分割从图像中消除未被树木覆盖的地面,并将所得图像馈送到级联检测器中,以识别图像中树干的位置。通过使用Microsoft KINECT传感器可以获得深度信息,以进一步提高检测器的精度。与基于神经网络的检测器和基于支持向量机的检测器相比,我们提出的方法具有更好的性能,检测率为91.7%,在其他检测器(包括原始的Viola和Jones检测器)中,错误接受率最低。还通过在油棕种植园中使用机器人原型在直播视频上测试了该方法的性能,证明了该方法的高准确性,检出率为97.8%。包含深度信息可在光线不足的夜晚和夜晚进行更准确的检测,其中依靠纯深度信息可在传感器范围内对树干进行100%的检测。 (C)2016 Elsevier B.V.保留所有权利。

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