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Study on Plant Pest Images Identification Based on Lifting Wavelet Transform

机译:基于升降小波变换的植物害虫图像识别研究

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Aiming at the weak noise signals the existence of plant diseases and insect pest images, pathological activity regulation of identification of the plant, so that between the signal molecules exist in plants can regulate mutually, collaborative work. Therefore, identification of weak signal molecules in plants is significant to the study of plant life activities. Taking corn pest images as the research object, using the identification method of lifting wavelet transform, combined with image identification technology, calculated the original plant diseases and insect pest images by not detect the break point of signal. Simulation results show that, the analysis of lifting wavelet of plant disease image identification technology reliability is about 71.65%; the accuracy of edge detection is about 76.21%. The operation speed of this algorithm is fast, easy for hardware implementation, provides an effective method for plant disease images identification.
机译:针对弱噪声信号发出植物疾病和昆虫害虫图像的存在,植物鉴定的病理活动调节,因此在植物中存在的信号分子之间可以调节相互调节。因此,植物中弱信号分子的鉴定对于植物生命活动的研究是显着的。采用玉米害虫图像作为研究对象,使用升降小波变换的识别方法,结合图像识别技术,计算原植物疾病和昆虫害虫图像未检测到断点信号。仿真结果表明,植物疾病升降小波的分析图像识别技术可靠性约为71.65%;边缘检测的准确性约为76.21%。该算法的操作速度快,易于硬件实现,提供了有效的植物疾病图像识别方法。

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