预测节能单光子摄像的重要光子。

IF 18.6
Shantanu Gupta, Varun Sundar, Lucas J Koerner, Claudio Bruschini, Edoardo Charbon, Mohit Gupta
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引用次数: 0

摘要

单光子雪崩二极管(SPAD)以精细的时间分辨率检测单个光子,实现在近乎完全黑暗、极端动态范围和快速运动的情况下成像等功能。由于这些功能,再加上最近出现的高分辨率(bb0 1MP)阵列,spad有可能成为未来需要在各种具有挑战性条件下运行的计算机视觉系统的主力。然而,由于潜在的雪崩过程,SPAD的灵敏度需要很高的能量成本,每个检测到的光子消耗大量的能量,这限制了高分辨率SPAD阵列的可扩展性和实用性。为了解决这个问题,我们提出了在给定的视觉任务中只预测和采样最显著光子的方法。为此,我们设计了计算轻量级的光子采样策略,该策略分配能量资源,仅在具有显著运动和空间变化的区域检测光子,同时不断适应变化的信号。我们证明了所提出的方法在恢复可比视频到全采样SPAD捕获时的有效性,仅使用一小部分光子(最多少10倍),在具有运动,高动态范围和不同光线条件的不同现实世界场景中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Important Photons for Energy-Efficient Single-Photon Videography.

Single-photon avalanche diodes (SPAD) detect individual photons with fine temporal resolutions, enabling capabilities like imaging in near-total darkness, extreme dynamic range, and rapid motion. Due to these capabilities, and coupled with the recent emergence of high-resolution (> 1MP) arrays, SPADs have the potential to become workhorses for computer vision systems of the future that need to operate in a wide range of challenging conditions. However, SPADs' sensitivity comes at a high energy cost due to the underlying avalanche process, which consumes substantial energy per detected photon, limiting the scalability and practicality of high-resolution SPAD arrays. To address this, we propose approaches to predict and sample only the most salient photons for a given vision task. To this end, we design computationally lightweight photon-sampling strategies that allocate energy resources for detecting photons only in areas with significant motion and spatial variation, while continually adapting to changing signals. We demonstrate the effectiveness of the proposed methods in recovering comparable video to a fully-sampled SPAD capture using only a small fraction of the photons (up to 10× fewer), across diverse real-world scenes with motion, high dynamic range, and varying light conditions.

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