Robust super-resolution depth imaging via a multi-feature fusion deep network

Three-dimensional imaging plays an important role in imaging applications where it is necessary to record depth. The number of applications that use depth imaging is increasing rapidly, and examples include self-driving autonomous vehicles and auto-focus assist on smartphone cameras. Light detection and ranging (LIDAR) via single-photon sensitive detector (SPAD) arrays is an emerging technology that enables the acquisition of depth images at high frame rates. However, the spatial resolution of this technology is typically low in comparison to the intensity images recorded by conventional cameras. To increase the native resolution of depth images from a SPAD camera, we develop a deep network built specifically to take advantage of the multiple features that can be extracted from a camera's histogram data. The network is designed for a SPAD camera operating in a dual-mode such that it captures alternate low resolution depth and high resolution intensity images at high frame rates, thus the system does not require any additional sensor to provide intensity images. The network then uses the intensity images and multiple features extracted from downsampled histograms to guide the upsampling of the depth. Our network provides significant image resolution enhancement and image denoising across a wide range of signal-to-noise ratios and photon levels. We apply the network to a range of 3D data, demonstrating denoising and a four-fold resolution enhancement of depth.

[1]  Thomas G. Dietterich,et al.  In Advances in Neural Information Processing Systems 12 , 1991, NIPS 1991.

[2]  Vedaldi Computer Vision – ECCV 2020 , 2020 .

[3]  Edoardo Charbon,et al.  Single-photon avalanche diode imagers in biophotonics: review and outlook , 2019, Light: Science & Applications.

[4]  B. Logan,et al.  Signal recovery and the large sieve , 1992 .

[5]  W. Marsden I and J , 2012 .

[6]  C. Callenberg,et al.  Super-resolution time-resolved imaging using computational sensor fusion , 2021, Scientific Reports.

[7]  R. Raskar,et al.  Single-photon sensitive light-in-fight imaging , 2015, Nature Communications.

[8]  Feng Zhu,et al.  Long-range depth imaging using a single-photon detector array and non-local data fusion , 2018, Scientific Reports.

[9]  Bernard Ghanem,et al.  End-to-end Learned, Optically Coded Super-resolution SPAD Camera , 2020, ACM Trans. Graph..

[10]  King-Sun Fu,et al.  IEEE Transactions on Pattern Analysis and Machine Intelligence Publication Information , 2004, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[11]  Robert Henderson,et al.  Detection and tracking of moving objects hidden from view , 2015, Nature Photonics.

[12]  Tsuyoshi Murata,et al.  {m , 1934, ACML.

[13]  IEEE JOURNAL OF SOLID-STATE CIRCUITS , 2019, IEEE Journal of Solid-State Circuits.

[14]  Antti Oulasvirta,et al.  Computer Vision – ECCV 2006 , 2006, Lecture Notes in Computer Science.

[15]  Zach DeVito,et al.  Opt , 2017 .