Noise removal using statistical operators for efficient leaf identification

Muhammad Ghali Aliyu, M. F. A. Kadir, A. R. Mamat, M. Mohamad
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引用次数: 1

Abstract

Plant identification based on leaf shape is becoming a popular trend, since each leaf carries substantial information that can be used to identify plant. This is difficult because the features of a leaf shape can be influenced by other leaves that have similar features but different categories. This paper presents the most popular statistical operators: mean filtering technique (MFT), median filtering technique (MDFT), Wiener filtering technique (WFT), rank order filtering technique (ROFT) and adaptive two-pass rank order filtering technique (ATRFT) for enhancing preprocessing stage. The performance of these techniques was evaluated using mean square error (MSE) and peak signal to noise ratio (PSNR). Ten features were extracted from the pre-processed leaf images and identification performance was also evaluated using precision and recall. It is found that WFT is the best filtering technique and gives the best identification accuracy of 95.1%.
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利用统计算子去除噪声,实现有效的叶片识别
基于叶片形状的植物识别正成为一种流行的趋势,因为每片叶子都携带着大量的信息,可以用来识别植物。这很困难,因为叶子形状的特征可能会受到具有相似特征但不同类别的其他叶子的影响。本文介绍了目前最流行的统计算子:均值滤波技术(MFT)、中值滤波技术(MDFT)、维纳滤波技术(WFT)、秩序滤波技术(ROFT)和自适应两道秩序滤波技术(ATRFT),以提高预处理阶段。使用均方误差(MSE)和峰值信噪比(PSNR)对这些技术的性能进行了评估。从预处理后的叶片图像中提取了10个特征,并对识别精度和召回率进行了评价。结果表明,WFT是最好的滤波技术,其识别准确率达到95.1%。
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