WAYLA - Generating Images from Eye Movements

Bingqing Yu, James J. Clark
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Abstract

We present a method for reconstructing images viewed by observers based only on their eye movements. By exploring the relationships between gaze patterns and image stimuli, the What Are You Looking At?" (WAYLA) system has the goal of synthesizing photo-realistic images that are similar to the original pictures being viewed. The WAYLA approach is based on the Conditional Generative Adversarial Network (Conditional GAN) image-to-image translation technique of Isola et al. We consider two specific applications - the first of reconstructing newspaper images from gaze heat maps and the second of detailed reconstruction of images containing only text. The newspaper image reconstruction process is divided into two image-to-image translation operations the first mapping gaze heat maps into image segmentations and the second mapping the generated segmentation into a newspaper image. We validate the performance of our approach using various evaluation metrics along with human visual inspection. All results confirm the ability of our network to perform image generation tasks using eye tracking data
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WAYLA——从眼球运动中生成图像
我们提出了一种仅根据观察者的眼球运动来重建他们所看到的图像的方法。通过探索凝视模式和图像刺激之间的关系,“你在看什么?”(WAYLA)系统的目标是合成与原始图片相似的逼真图像。WAYLA方法基于Isola等人的条件生成对抗网络(Conditional Generative Adversarial Network,条件GAN)图像到图像转换技术。我们考虑了两个具体的应用-第一个是从凝视热图重建报纸图像,第二个是仅包含文本的图像的详细重建。报纸图像重建过程分为两个图像到图像的转换操作,第一个是将凝视热图映射到图像分割中,第二个是将生成的分割映射到报纸图像中。我们使用各种评估指标以及人类视觉检查来验证我们方法的性能。所有结果都证实了我们的网络使用眼动追踪数据执行图像生成任务的能力
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