首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A Screen Location Method for Treating American Hyphantria cunea Larvae Using Convolutional Neural Network
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A Screen Location Method for Treating American Hyphantria cunea Larvae Using Convolutional Neural Network

机译:一种使用卷积神经网络治疗美国菌根Cunea幼虫的屏幕定位方法

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Chemical control is the major approach to handle the American Hyphantria cunea issue; however, it often causes chemical pollution and resource waste. How to precisely apply pesticide to reduce pollution and waste has been a difficult problem. The premise of accurate spraying of chemicals is to accurately determine the location of the spray target. In this paper, an algorithm based on a convolutional neural network (CNN) is proposed to locate the screen of American Hyphantria cunea. Specifically, comparing the effect of multicolor space-grouping convolution with that of the same color space-grouping convolution, the better effect of different color space-grouping convolution is first proved. Then, RGB and YIQ are employed to identify American Hyphantria cunea screen. Moreover, a noncoincident sliding window method is proposed to divide the image into multiple candidate boxes to reduce the number of convolutions. That is, the probability of American Hyphantria cunea is determined by grouping convolution in each candidate box, and two thresholds (E and Q) are set. When the probability is higher than E, the candidate box is regarded as excellent; when the probability is lower than Q, the candidate box is regarded as unqualified; when the probability is in between, the candidate box is regarded as qualified. The unqualified candidate box is eliminated, and the qualified candidate box cannot exit the above steps until the number of extractions of the candidate box reaches the set value or there is no qualified candidate box. Finally, all the excellent candidate boxes are fused to obtain the final recognition result. Experiments show that the recognition rate of this method is higher than 96%, and the processing time of a single picture is less than 150?ms.
机译:化学控制是处理美国杨树丘亚的主要方法;然而,它通常会导致化学污染和资源浪费。如何精确地应用杀虫剂以减少污染,浪费是一个难题。精确喷涂化学品的前提是准确地确定喷雾靶的位置。本文提出了一种基于卷积神经网络(CNN)的算法,以定位美国菌丝Cunea的屏幕。具体而言,比较多色空间分组卷积与相同颜色空间分组卷积的效果,首先证明了不同颜色空间分组卷积的更好效果。然后,RGB和YIQ用于识别美国悬垂性Cunea屏幕。此外,提出了非加量的滑动窗口方法以将图像划分为多个候选框以减少卷曲的数量。也就是说,美国杨南丘亚亚的概率由每个候选盒中的卷积进行分组,并设定两个阈值(e和q)。当概率高于E时,候选盒被认为是优秀的;当概率低于Q时,候选盒被视为不合格;当概率在两者之间时,候选盒被视为合格。取消了不合格的候选框,合格的候选框无法退出上述步骤,直到候选框的提取次数到达设定值或没有合格的候选框。最后,所有优秀的候选盒都融合以获得最终识别结果。实验表明,该方法的识别率高于96%,单张图像的处理时间小于150. ms。

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