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An Efficient Image Quality Assessment Guidance Method for Unmanned Aerial Vehicle

机译:一种有效的无人机图像质量评估指导方法

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More and more advanced unmanned aerial vehicles (UAVs) equipped with different kinds of sensors can acquire images of various scenes from tasks. Some of them have to assess the obtained images first and then decide the subsequent actions like humans. Accurate and fast image quality assessing capability is critical to UAV. One or more objective quality indexes are usually selected by UAV to assess all the whole image, which may lead to inefficient evaluation performance. In order to further link human cognition pattern with intelligent vision system and provide useful guidance to shorten the image quality assessment time for UAV, a new experimental method of subjective image assessment based on local image is proposed in this paper. 60 participants are invited to conduct subjective image quality assessment experiment, in which 15 original images including people, scenery and animals are distorted by four methods, i.e., Gaussian additive white noise, Gaussian blur, jpeg compression and jp2k compression. Moreover, a new local image segmentation method is designed to segment each image into 6 local areas. For the subjective scores, global-local correlation is analyzed by Spearman Rank Order Correlation Coefficient (SROCC). The experimental results show that the global subjective assessment has the strongest correlation with the local subjective assessment having the best image quality. Further analysis shows that the local images with the best quality often have sufficient color information and rich texture details. Assessing the local images instead of the global ones provides a shortcut to design objective evaluation algorithms, which is a practical guidance for UAV to perform efficient images quality assessment.
机译:越来越多的配备有不同类型传感器的先进无人机(UAV)可以从任务中获取各种场景的图像。其中一些必须先评估获得的图像,然后再决定类似人类的后续动作。准确和快速的图像质量评估能力对无人机至关重要。 UAV通常选择一个或多个客观质量指标来评估整个图像,这可能会导致评估效率低下。为了进一步将人类认知模式与智能视觉系统联系起来,为缩短无人机图像质量评估时间提供有益的指导,本文提出了一种新的基于局部图像的主观图像评估实验方法。邀请60位参与者进行主观图像质量评估实验,其中通过高斯加性白噪声,高斯模糊,jpeg压缩和jp2k压缩四种方法使包括人,风景和动物在内的15张原始图像失真。此外,设计了一种新的局部图像分割方法,将每个图像分割为6个局部区域。对于主观得分,通过Spearman等级顺序相关系数(SROCC)分析全局局部相关性。实验结果表明,全局主观评估与图像质量最好的局部主观评估具有最强的相关性。进一步的分析表明,具有最佳质量的局部图像通常具有足够的颜色信息和丰富的纹理细节。评估局部图像而不是全局图像为设计客观评估算法提供了捷径,这是无人机执行有效图像质量评估的实用指南。

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