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A Method for the Evaluation of Image Quality According to the Recognition Effectiveness of Objects in the Optical Remote Sensing Image Using Machine Learning Algorithm

机译:一种基于机器学习算法的光学遥感图像中物体识别效果的图像质量评估方法

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摘要

Objective and effective image quality assessment (IQA) is directly related to the application of optical remote sensing images (ORSI). In this study, a new IQA method of standardizing the target object recognition rate (ORR) is presented to reflect quality. First, several quality degradation treatments with high-resolution ORSIs are implemented to model the ORSIs obtained in different imaging conditions; then, a machine learning algorithm is adopted for recognition experiments on a chosen target object to obtain ORRs; finally, a comparison with commonly used IQA indicators was performed to reveal their applicability and limitations. The results showed that the ORR of the original ORSI was calculated to be up to 81.95%, whereas the ORR ratios of the quality-degraded images to the original images were 65.52%, 64.58%, 71.21%, and 73.11%. The results show that these data can more accurately reflect the advantages and disadvantages of different images in object identification and information extraction when compared with conventional digital image assessment indexes. By recognizing the difference in image quality from the application effect perspective, using a machine learning algorithm to extract regional gray scale features of typical objects in the image for analysis, and quantitatively assessing quality of ORSI according to the difference, this method provides a new approach for objective ORSI assessment.
机译:客观有效的图像质量评估(IQA)与光学遥感图像(ORSI)的应用直接相关。在这项研究中,提出了一种新的标准化目标对象识别率(ORR)的IQA方法以反映质量。首先,采用高分辨率ORSI进行了几种质量下降处理,以对在不同成像条件下获得的ORSI进行建模。然后,采用机器学习算法对所选目标对象进行识别实验,以获得ORR。最后,与常用的IQA指标进行了比较,以揭示其适用性和局限性。结果表明,原始ORSI的ORR最高可达81.95%,而质量下降图像与原始图像的ORR比率分别为65.52%,64.58%,71.21%和73.11%。结果表明,与常规数字图像评估指标相比,这些数据可以更准确地反映不同图像在目标识别和信息提取中的优缺点。通过从应用效果的角度识别图像质量的差异,使用机器学习算法提取图像中典型对象的区域灰度特征进行分析,并根据差异定量评估ORSI的质量,该方法提供了一种新方法用于客观的ORSI评估。

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