茶叶质量检测的图像预处理算法

Ira Gaba, B. Ramamurthy
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引用次数: 1

摘要

茶叶品质的鉴别与预测是当今农业领域重要的研究热点。人工智能已成为模式识别领域的最新研究热点。通过不同技术的组合和排列,既能很好地解决问题,又能提高识别的准确性。因此,迫切需要对用于不同等级茶树茶叶质量鉴定的人工智能技术进行详细的调查。在本文中,我们的目的是用于预处理输入图像的各种方法,以提取处理后的图像,这将进一步有助于特征提取和分类提出的图像。获得有效和准确的处理数据是非常重要的,这些数据将进一步作为下一级模块的输入。本文介绍了各种边缘检测方法在图像上的应用,如Canny、Sobel和Laplacian。进一步的结果比较质量指标参数,如均方误差(MSE)和结构相似性指数度量(SSIM)。本文的主要工作是对处理后的图像进行边缘检测和质量检测。这里使用的软件是python。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Pre-Processing Algorithms for the Quality Detection of Tea Leaves
This Identification and prediction of the tea quality is the essential research focus nowadays in the field of agriculture. Nowadays the Artificial Intelligence has become the latest topic in the region of pattern recognition. The various combination and permutation of the different techniques has resulted in proper solving the problem as well as have better accuracy in recognition. Therefore, there is urge need of a detailed survey AI techniques used for the identification of the tea leaf quality for the different grades of tea plants. In this paper, we aim on the various methods used for the pre- processing of the input image to extract the processed image which will further be useful for the feature extraction and the classification of the proposed image. It is very important to get the effective and accurate processed data which will further act as an input for the next level modules. This paper shows various methods of edge detection are applied on the image like Canny, Sobel and Laplacian are used. The further results are compared for quality metrics parameters such as the Mean Square Error (MSE) & Structural Similarity Index Metric (SSIM). The main agenda of this paper is to perform the edge detection and to check the quality measure of the processed image. The software used here is python.
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