Single-photon light detection and ranging (LiDAR) has been widely applied to 3D imaging in challenging scenarios. However, limited signal photon counts and high noises in the collected data have posed great challenges for predicting the depth image precisely. In this paper, we propose a pixel-wise residual shrinkage network for photon-efficient imaging from high-noise data, which adaptively generates the optimal thresholds for each pixel and denoises the intermediate features by soft thresholding. Besides, redefining the optimization target as pixel-wise classification provides a sharp advantage in producing confident and accurate depth estimation when compared with existing research. Comprehensive experiments conducted on both simulated and real-world datasets demonstrate that the proposed model outperforms the state-of-the-arts and maintains robust imaging performance under different signal-to-noise ratios including the extreme case of 1:100.
翻译:单光光探测和测距(LiDAR)在具有挑战性的情景中广泛应用于三维成像(3D成像),然而,在收集的数据中,信号光子计数有限,噪音高,对准确预测深度图像构成巨大挑战。在本文件中,我们提议建立一个高噪音数据光子高效成像的像素剩余缩缩水网络,通过软阈值为每个像素生成最佳阈值,并隐藏中间特征。此外,重新界定优化目标为像素分类,与现有研究相比,在生成信心和准确的深度估计方面,具有显著优势。 对模拟数据集和现实世界数据集进行的全面实验表明,拟议的模型超越了高噪音数据的状态,在不同信号到噪音比率下保持了稳健的成像性能,包括1:100的极端情况。