Agricultural Robot for Intelligent Detection of Pyralidae Insects

Zhuhua Hu, Boyi Liu, Yaochi Zhao
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引用次数: 7

Abstract

The Pyralidae insects are one of the main pests in economic crops. However, the manual detection and identification of Pyralidae insects are labor intensive and inefficient, and subjective factors can influence recognition accuracy. To address these shortcomings, an insect monitoring robot and a new method to recognize the Pyralidae insects are presented in this chapter. Firstly, the robot gets images by performing a fixed action and detects whether there are Pyralidae insects in the images. The recognition method obtains the total probability image by using reverse mapping of histogram and multi-template images, and then image contour can be extracted quickly and accurately by using constraint Otsu. Finally, according to the Hu moment characters, perimeter, and area characters, the con- tours can be filtrated, and recognition results with triangle mark can be obtained. According to the recognition results, the speed of the robot car and mechanical arm can be adjusted adaptively. The theoretical analysis and experimental results show that the proposed scheme has high timeliness and high recognition accuracy in the natural planting scene.
一种智能检测蚜科昆虫的农业机器人
皮蚜科昆虫是危害经济作物的主要害虫之一。然而,手工检测鉴定蚊科昆虫劳动强度大,效率低,主观因素也会影响识别的准确性。为了解决这些问题,本章提出了一种昆虫监测机器人和一种识别Pyralidae科昆虫的新方法。首先,机器人通过固定动作获取图像,并检测图像中是否有皮蚜科昆虫。该识别方法通过直方图和多模板图像的反向映射获得全概率图像,然后利用约束大津快速准确地提取图像轮廓。最后,根据胡矩特征、周长特征和面积特征对轮廓图进行过滤,得到带有三角形标记的识别结果。根据识别结果,可以自适应调整机器人汽车和机械臂的速度。理论分析和实验结果表明,该方案在自然种植场景中具有较高的时效性和识别精度。
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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