CVSPAug 10, 2023

Absorption-Based, Passive Range Imaging from Hyperspectral Thermal Measurements

arXiv:2308.05818v25 citationsh-index: 31
Originality Incremental advance
AI Analysis

This addresses the problem of passive ranging in natural scenes for remote sensing applications, but it is incremental as it builds on previous methods by handling objects with temperatures close to air temperature.

The paper tackled passive range imaging from hyperspectral thermal data by jointly estimating range and object properties, recovering range features from 15m to 150m with good qualitative match to lidar data for pixels with negligible reflected downwelling.

Passive hyperspectral longwave infrared measurements are remarkably informative about the surroundings. Remote object material and temperature determine the spectrum of thermal radiance, and range, air temperature, and gas concentrations determine how this spectrum is modified by propagation to the sensor. We introduce a passive range imaging method based on computationally separating these phenomena. Previous methods assume hot and highly emitting objects; ranging is more challenging when objects' temperatures do not deviate greatly from air temperature. Our method jointly estimates range and intrinsic object properties, with explicit consideration of air emission, though reflected light is assumed negligible. Inversion being underdetermined is mitigated by using a parametric model of atmospheric absorption and regularizing for smooth emissivity estimates. To assess where our estimate is likely accurate, we introduce a technique to detect which scene pixels are significantly influenced by reflected downwelling. Monte Carlo simulations demonstrate the importance of regularization, temperature differentials, and availability of many spectral bands. We apply our method to longwave infrared (8--13 $μ$m) hyperspectral image data acquired from natural scenes with no active illumination. Range features from 15m to 150m are recovered, with good qualitative match to lidar data for pixels classified as having negligible reflected downwelling.

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