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Visual saliency and potential field data enhancements: Where is your attention drawn?

机译:视觉显着性和潜在的现场数据增强功能:您的注意力在哪里?

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Interpretation of gravity and magnetic data for exploration applications may be based on pattern recognition in which geophysical signatures of geologic features associated with localized characteristics are sought within data. A crucial control on what comprises noticeable and comparable characteristics in a data set is how images displaying those data are enhanced. Interpreters are provided with various image enhancement and display tools to assist their interpretation, although the effectiveness of these tools to improve geologic feature detection is difficult to measure. We addressed this challenge by analyzing how image enhancement methods impact the interpreter's visual attention when interpreting the data because features that are more salient to the human visual system are more likely to be noticed. We used geologic target-spotting exercises within images generated from magnetic data to assess commonly used magnetic data visualization methods for their visual saliency. Our aim was achieved in two stages. In the first stage, we identified a suitable saliency detection algorithm that can computationally predict visual attention of magnetic data interpreters. The computer vision community has developed various image saliency detection algorithms, and we assessed which algorithm best matches the interpreter's data observation patterns for magnetic target-spotting exercises. In the second stage, we applied this saliency detection algorithm to understand potential visual biases for commonly used magnetic data enhancement methods. We developed a guide to choosing image enhancement methods, based on saliency maps that minimize unintended visual biases in magnetic data interpretation, and some recommendations for identifying exploration targets in different types of magnetic data.
机译:用于勘探应用的重力和磁数据的解释可以基于模式识别,其中在数据内寻找与局部特征相关联的地质特征的地球物理特征。数据集中包含显着和可比较特征的关键控件是如何增强显示这些数据的图像。口译员提供了各种图像增强和显示工具来帮助他们进行解释,尽管很难衡量这些工具改善地质特征检测的有效性。我们通过分析图像增强方法在解释数据时如何影响解释者的视觉注意力来解决这一挑战,因为更可能注意到对人类视觉系统更重要的功能。我们在磁数据生成的图像中使用了地质目标点测验演习,以评估常用的磁数据可视化方法的视觉显着性。我们的目标分两个阶段实现。在第一阶段,我们确定了一种合适的显着性检测算法,该算法可通过计算预测磁性数据解释器的视觉注意力。计算机视觉社区已经开发了各种图像显着性检测算法,并且我们评估了哪种算法最适合解释者的数据观察模式以进行磁性目标发现练习。在第二阶段,我们应用这种显着性检测算法来了解常用磁性数据增强方法的潜在视觉偏差。我们基于显着图(最大程度上减少了磁数据解释中的意外视觉偏差)以及针对识别不同类型磁数据中的勘探目标的一些建议,开发了选择图像增强方法的指南。

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