一个深度恢复无遮挡时间数据集

Daniel Rotman, Guy Gilboa
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引用次数: 7

摘要

深度恢复,纠正深度噪声和伪影的任务,最近由于商品深度相机的增加而越来越受欢迎。在评估现有方法的质量时,大多数研究人员采用流行的Middlebury数据集,然而,该数据集不是为深度增强而创建的,因此缺乏将真正的低质量深度图像与高质量的地面真实图像进行比较的选项。为了解决这一缺点,我们提出了深度恢复无遮挡时间(DROT)数据集。该数据集提供了真实的深度传感器输入,加上注册的像素到像素的彩色图像,以及我们希望比较的真实深度。我们的数据集不仅包括Kinect 1和Kinect 2数据,还包括一个用于集成到手持设备的英特尔R200传感器。在此基础上,提出了一种新的时间深度恢复方法。利用多帧,我们为初始退化深度图创建了许多可能性,这使我们能够在细化深度图像时做出更有根据的决定。用我们的数据集评估这种方法显示出显著的好处,特别是在克服真实的传感器噪声伪影方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Depth Restoration Occlusionless Temporal Dataset
Depth restoration, the task of correcting depth noise and artifacts, has recently risen in popularity due to the increase in commodity depth cameras. When assessing the quality of existing methods, most researchers resort to the popular Middlebury dataset, however, this dataset was not created for depth enhancement, and therefore lacks the option of comparing genuine low-quality depth images with their high-quality, ground-truth counterparts. To address this shortcoming, we present the Depth Restoration Occlusionless Temporal (DROT) dataset. This dataset offers real depth sensor input coupled with registered pixel-to-pixel color images, and the ground-truth depth to which we wish to compare. Our dataset includes not only Kinect 1 and Kinect 2 data, but also an Intel R200 sensor intended for integration into hand-held devices. Beyond this, we present a new temporal depth-restoration method. Utilizing multiple frames, we create a number of possibilities for an initial degraded depth map, which allows us to arrive at a more educated decision when refining depth images. Evaluating this method with our dataset shows significant benefits, particularly for overcoming real sensor-noise artifacts.
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