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Context-dependent image quality assessment of JPEG compressed Mars Science Laboratory Mastcam images using convolutional neural networks

机译:使用卷积神经网络的JPEG压缩火星科学实验室Mastcam图像的上下文相关图像质量评估

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摘要

The Mastcam color imaging system on the Mars Science Laboratory Curiosity rover acquires images that are often JPEG compressed before being downlinked to Earth. Depending on the context of the observation, this compression can result in image artifacts that might introduce problems in the scientific interpretation of the data and might require the image to be retransmitted losslessly. We propose to streamline the tedious process of manually analyzing images using context dependent image quality assessment, a process wherein the context and intent behind the image observation determine the acceptable image quality threshold. We propose a neural network solution for estimating the probability that a Mastcam user would find the quality of a compressed image acceptable for science analysis. We also propose an automatic labeling method that avoids the need for domain experts to label thousands of training examples. We performed multiple experiments to evaluate the ability of our model to assess context-dependent image quality, the efficiency a user might gain when incorporating our model, and the uncertainty of the model given different types of input images. We compare our approach to the state of the art in no-reference image quality assessment. Our model correlates well with the perceptions of scientists assessing context-dependent image quality and could result in significant time savings when included in the current Mastcam image review process.
机译:火星科学实验室“好奇号”流动站上的Mastcam彩色成像系统获取的图像通常经过JPEG压缩,然后再下行传输到地球。根据观察的上下文,这种压缩可能会导致图像伪影,这可能会在数据的科学解释中引入问题,并可能要求无损地重新传输图像。我们建议简化使用依赖于上下文的图像质量评估来手动分析图像的繁琐过程,该过程中图像观察背后的上下文和意图确定了可接受的图像质量阈值。我们提出了一种神经网络解决方案,用于估算Mastcam用户发现科学分析可接受的压缩图像质量的可能性。我们还提出了一种自动标记方法,可以避免领域专家标记数千个培训示例。我们进行了多次实验,以评估模型评估上下文相关图像质量的能力,用户在合并模型时可能获得的效率以及给定不同输入图像类型时模型的不确定性。我们将无参考图像质量评估中的方法与最新技术进行了比较。我们的模型与评估上下文相关图像质量的科学家的看法紧密相关,当包含在当前的Mastcam图像审查流程中时,可以节省大量时间。

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