基于Android智能手机的高斯金字塔和拉普拉斯边缘检测提高木材识别精度

B. Sugiarto, M. R. Arifin, Riffa Haviani Laluma, E. Prakasa, Gunawansyah, Ade Geovania Azwar
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引用次数: 1

摘要

在木材解剖学家没有眼睛观察的情况下,进行了几项快速木材识别过程的研究。在这种情况下,计算机视觉是首选,其识别结果比传统方法更快,更准确。我们之前的研究开发了一种在Android智能手机上使用定向梯度直方图(HOG)特征提取和支持向量机(SVM)作为分类器的木材识别方法。本文利用高斯金字塔和拉普拉斯边缘检测方法对图像进行预处理,提高了HOG方法和SVM分类器的木材识别精度。在不降低图像质量的前提下,利用高斯金字塔将木材图像分解为更小的像素组,从而在提取过程中限定木材图像的尺寸。另一方面,为了清除和区分木材图像中的图案,采用拉普拉斯边缘检测。实验采用了Kembang Semangkok、Ketapang、Preparat Darat、Pinang和Puspa五个树种的木材图像。结果表明,每种木材的准确度、精密度、召回率和特异性都有所提高。Pinang种和Puspa种的增量精度最低,为4.00%,Puspa种的增量精度为零。此外,在5种木材中,HOG描述符和SVM分类器的识别结果显著增加,这对提高HOG描述符和SVM分类器的识别结果非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Wood Identification Accuracy Using Gaussian Pyramid and Laplacian Edge Detection Based on Android Smartphone
Several studies have been carried out for the rapid wood identification process without eye observation of the wood anatomists. Computer vision is the first choice in this case so that the identification results are rapid and more accurate than the conventional method. Our previous research developed a method for wood identification using the Histogram of Oriented Gradient (HOG) feature extraction and Support Vector Machine (SVM) as a classifier on Android smartphones. This paper proposes an improved wood identification accuracy of the HOG method and SVM classifier by utilizing several methods on the image preprocessing i.e. the Gaussian pyramid and the Laplacian edge detection methods. The Gaussian pyramid is used to reduce the wood image into a smaller group of pixels to qualify size wood image in the extraction process without reducing the image quality. On the other hand, to clear and distinguish the pattern in the wood image, the Laplacian edge detection is used. In our experiments, wood images from five wood species were used i.e. Kembang Semangkok, Ketapang, Preparat Darat, Pinang, and Puspa. The result showed that each wood species have increased accuracy, precision, recall, and specificity. The lowest increment accuracy was for Pinang and Puspa species at 4.00% of accuracy and zero precision value is found in Puspa species. Furthermore, from five wood species, there was a significantly increased result so it is very useful for improving the result of identification using HOG descriptor and SVM Classifier.
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