基于优化图像处理技术的复合型种子品种识别

H. S. Hemachitra, A. Lakshmi
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引用次数: 4

摘要

图像处理功能已在众多农业工程扩展中得到规范,以完成快速准确的处理。物理分类过程较为缓慢,存在一定程度的偏差,对于典型类型的种子品种难以列举。种子检验和分类可以为种子的创造、种子优劣控制和掺假鉴定提供额外的知识。为了解决标准型种子品种在感知和识别方面的困难,采用了多种技术,但由于多面型种子品种的纹理、形状和颜色图案,对其进行分类和识别可能是一个相当困难的过程。这些技术不能提供一个优化的和正确的描述复杂类型的种子品种。本工作的主要目的是在农业施肥领域寻找具有应用前景的复合型种子品种。本文提出了一种新的图像处理系统,该系统结合了增强的特征选择和分类方法,可以优化识别多面型种子品种的准确性并减少识别时间。该方法通过特征选择和分类为复合类型种子提供了有效的识别方法。在识别过程中,采用自适应中值滤波对图像进行增强;图像边缘检测采用Sobel算子,分割采用分水岭分割。然后采用蚁群优化(Ant Colony Optimization, ACO)策略进行特征选择,并采用支持向量机(Support Vector Machine, SVM)进行分类。基于蚁群算法的特征选择(ACOFS)为数据集提供了8 ~ 20秒的特征选择时间,支持向量机分类在预测时提供了93.487%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Complex type seed variety identification and recognition using optimized image processing techniques
Image processing has been functional to the numerous expansions of agricultural engineering in regulate to accomplish a quick accurate process. The procedure of physical categorization is leisurely and attains a level of bias, which is hard to be enumerated for typical type seed varieties. Seed examination and categorization can afford extra acquaintance in their creation, seeds superiority control and adulteration identification. Several techniques are utilized to resolve the struggle in perceiving and recognizing the standard type seed varieties, but the most objective is to categorize and recognize the Multifaceted Type Seed Varieties may be a quite difficult process, owing to its textural, shape and color patterns. These techniques do not provide an optimized and a correct depiction of the complex type seed varieties. The main objective of this work is to identify the complex type seed varieties for prospect fertilization within the field of agriculture. This context plans novel image processing systems to recognize, which incorporates an enhanced feature selection, and classification methodologies, which might optimize the exactness and reduce the time consumption of identifying the multifaceted type seed varieties. This novel technique provides efficient identification by feature selection and classification of those composite type seeds. The identification process, Adaptive Median Filter is employed for image enhancement; the edge detection for the image employs Sobel operator and Watershed Segmentation is used for the segmentation. Then Ant Colony Optimization (ACO) strategy is employed for the feature selection and Support Vector Machine (SVM) is employed in the classification process. The ACO based feature selection (ACOFS) provides ranges 8s to 20s of feature selection time for the dataset and the SVM classification provide 93.487% of accuracy while prediction.
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