木材图像的图像质量评估

Heshalini Rajagopal, N. Mokhtar, A. S. M. Khairuddin
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引用次数: 0

摘要

本工作提出了对木材图像进行主观和客观评价,分析木材图像的质量,用于木材种类识别。利用高斯白噪声(GWN)和运动模糊(MB)对参考图像进行不同程度的失真处理,生成不同程度的失真图像进行比较。选取森美兰州林业局10名被试对扭曲影像进行主观评价。在客观评价中,采用全参考质量评价法(FR-IQAs)对失真图像进行评价。以主观评分为基准,确定最适合评价木材图像的客观FR-IQA。主观得分和客观FR-IQAs之间的关系使用绩效指标,即PLCC和RMSE进行检验。结果表明,FSIM是评价受GWN和MB影响的木材图像最合适的FR-IQA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Quality Assessment for Wood Images
This work proposed the implementation of subjective and objective assessment on wood images to analyse the quality of wood images for wood species recognition purposes. Several distorted images are generated from the reference images by applying Gaussian White Noise (GWN) and Motion Blur (MB) at various levels of distortions for comparison purposes. Ten subjects from Negeri Sembilan Forestry Department were selected to assess the distorted images for the subjective evaluation. In the objective evaluation, five Full Reference-IQAs (FR-IQAs) were used to evaluate the distorted images. The subjective scores were used as the benchmark to determine the most suitable objective FR-IQA to assess wood images. The relationship between the subjective scores and objective FR-IQAs are examined using performance metrics, namely PLCC and RMSE. It was found that FSIM is the most suitable FR-IQA to assess wood images distorted with GWN and MB.
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