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Identification of Pecan Weevils through image processing.

机译:通过图像处理识别山核桃象鼻虫。

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摘要

Scope and Method of Study. The scope of this study is to develop a recognition system that can serve in a wireless imaging network for monitoring pecan weevils. The recognition methods used in this study are based on template matching. Five recognition methods were implemented in this study; namely, Normalized crosscorrelation, Fourier descriptors, Zernike moments, String matching, and Regional properties. The training set consisted of 205 pecan weevils and the testing set included 30 randomly selected pecan weevils and 74 other insects which typically exist in pecan habitat.;Findings and Conclusions. It is found that Region-based methods are better in representing and recognizing biological objects such as insects. Moreover, different recognition rates are obtained at different order of Zernike moments. The optimum result among the tested orders of Zernike moments is found to be at order 3. The results also show that using different number of Fourier descriptors may not significantly increase the recognition rate of this method. The most robust and reliable recognition rate is achieved when the two recognition methods, namely, Zernike moments and Region properties are used in a combination. The results indicate that a positive match from either of these two independent tests would yield reliable results; therefore, 100% recognition could be achieved by adopting the proposed algorithm. In addition, the processing time for such recognition is 0.44 sec., on average.
机译:研究范围和方法。这项研究的范围是开发一种可在无线成像网络中用于监视山核桃象鼻的识别系统。本研究中使用的识别方法基于模板匹配。在这项研究中实施了五种识别方法。即归一化互相关,傅立叶描述符,泽尼克矩,字符串匹配和区域属性。训练集由205个山核桃象鼻虫组成,测试集包括30个随机选择的山核桃象鼻虫和通常在山核桃栖息地中存在的74种其他昆虫。;发现和结论。发现基于区域的方法在表示和识别昆虫等生物物体方面表现更好。此外,在不同的Zernike矩阶数下获得了不同的识别率。测得的Zernike矩阶数之间的最佳结果为3阶。结果还表明,使用不同数量的Fourier描述符可能不会显着提高该方法的识别率。结合使用两种识别方法,即Zernike矩和Region属性,可以实现最强大和最可靠的识别率。结果表明,这两个独立测试中任何一个的正匹配都将产生可靠的结果。因此,采用本文提出的算法可以达到100%的识别率。另外,用于这种识别的处理时间平均为0.44秒。

著录项

  • 作者

    Ashaghathra, Saleh M.;

  • 作者单位

    Oklahoma State University.;

  • 授予单位 Oklahoma State University.;
  • 学科 Engineering Agricultural.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 148 p.
  • 总页数 148
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;无线电电子学、电信技术;
  • 关键词

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