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Resolution Limit of Single-Photon LiDAR: Theoretical Analysis and Experimental Validation


Основні поняття
Fundamental trade-off between spatial resolution and SNR in single-photon LiDAR systems.
Анотація

The content explores the resolution limit of single-photon LiDAR systems, focusing on the trade-off between spatial resolution and SNR. It delves into theoretical characterizations, approximation techniques, and MSE analysis. The experiments include simulated 1D and 2D scenarios, as well as a real 2D experiment using SPAD data. The results demonstrate the impact of various parameters on the resolution limit and validate the theoretical predictions.

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Статистика
Single-photon LiDAR systems equipped with an array of detectors improve spatial resolution and sensing speed. The per-pixel SNR decreases as more pixels are packed in a unit space due to the fixed amount of flux produced by the laser transmitter. Theoretical predictions align well with simulations and real data in the analysis of the resolution limit.
Цитати
"Theoretical predictions align well with simulations and real data."

Ключові висновки, отримані з

by Stanley H. C... о arxiv.org 03-27-2024

https://arxiv.org/pdf/2403.17719.pdf
Resolution Limit of Single-Photon LiDAR

Глибші Запити

What are the implications of the resolution limit on the practical applications of single-photon LiDAR systems

The resolution limit of single-photon LiDAR systems has significant implications for practical applications. One key implication is that the trade-off between spatial resolution and signal-to-noise ratio (SNR) becomes crucial. As the spatial resolution increases by packing more pixels into a unit space, the per-pixel SNR decreases due to the reduced amount of photon flux seen by each pixel. This trade-off impacts the accuracy and reliability of depth estimates in LiDAR systems. Additionally, the resolution limit affects the overall performance and efficiency of the system in various applications such as navigation, object identification, and 3D imaging. Understanding and optimizing the resolution limit is essential for maximizing the capabilities and effectiveness of single-photon LiDAR systems in real-world scenarios.

How do noise mitigation schemes impact the trade-off between spatial resolution and SNR in LiDAR systems

Noise mitigation schemes play a critical role in managing the trade-off between spatial resolution and SNR in LiDAR systems. These schemes are designed to reduce the impact of noise sources such as background noise, dark current, and pile-up effects, which can degrade the quality of depth measurements. By implementing noise mitigation techniques, such as advanced signal processing algorithms, temporal gating, and adaptive thresholding, the system can enhance the SNR at each pixel while maintaining a certain level of spatial resolution. These schemes help optimize the performance of LiDAR systems by minimizing noise-induced errors and improving the overall accuracy of depth estimation. By effectively mitigating noise, the system can achieve better depth reconstruction and imaging results in challenging environments.

How can the findings of this study be extended to optimize the design of LiDAR systems for specific applications

The findings of this study can be extended to optimize the design of LiDAR systems for specific applications by providing insights into the fundamental trade-off between spatial resolution and SNR. By understanding the theoretical limits of resolution and noise in single-photon LiDAR systems, designers can make informed decisions about system parameters such as pixel density, pulse width, and noise reduction strategies. This knowledge can be used to tailor the system design to meet the requirements of different applications, such as autonomous navigation, environmental mapping, and object recognition. By leveraging the theoretical predictions and approximation techniques presented in the study, designers can optimize the performance of LiDAR systems for specific use cases, ensuring efficient and accurate depth sensing in diverse scenarios.
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