论文标题

三角洲:从轻质TOF传感器和RGB图像中的深度估计

DELTAR: Depth Estimation from a Light-weight ToF Sensor and RGB Image

论文作者

Li, Yijin, Liu, Xinyang, Dong, Wenqi, Zhou, Han, Bao, Hujun, Zhang, Guofeng, Zhang, Yinda, Cui, Zhaopeng

论文摘要

Light-weight time-of-flight (ToF) depth sensors are small, cheap, low-energy and have been massively deployed on mobile devices for the purposes like autofocus, obstacle detection, etc. However, due to their specific measurements (depth distribution in a region instead of the depth value at a certain pixel) and extremely low resolution, they are insufficient for applications requiring high-fidelity depth such as 3D reconstruction.在本文中,我们提出了Deltar,这是一种新颖的方法,可通过与颜色图像合作来赋予高分子TOF传感器能力,以测量高分辨率和准确的深度。作为Deltar的核心,提出了一种用于深度分布的特征提取器,并提出了基于注意力的神经结构,以有效地融合来自颜色和TOF域的信息。为了在现实世界中评估我们的系统,我们设计了一个数据收集设备,并提出了一种校准RGB相机和TOF传感器的新方法。实验表明,我们的方法比旨在使用商品级RGB-D传感器的PAR性能实现的现有框架比现有的框架产生更准确的深度。代码和数据可在https://zju3dv.github.io/deltar/上找到。

Light-weight time-of-flight (ToF) depth sensors are small, cheap, low-energy and have been massively deployed on mobile devices for the purposes like autofocus, obstacle detection, etc. However, due to their specific measurements (depth distribution in a region instead of the depth value at a certain pixel) and extremely low resolution, they are insufficient for applications requiring high-fidelity depth such as 3D reconstruction. In this paper, we propose DELTAR, a novel method to empower light-weight ToF sensors with the capability of measuring high resolution and accurate depth by cooperating with a color image. As the core of DELTAR, a feature extractor customized for depth distribution and an attention-based neural architecture is proposed to fuse the information from the color and ToF domain efficiently. To evaluate our system in real-world scenarios, we design a data collection device and propose a new approach to calibrate the RGB camera and ToF sensor. Experiments show that our method produces more accurate depth than existing frameworks designed for depth completion and depth super-resolution and achieves on par performance with a commodity-level RGB-D sensor. Code and data are available at https://zju3dv.github.io/deltar/.

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