Conventional LIDAR systems require hundreds or thousands of photon detections per pixel to form accurate depth and reflectivity images. Recent photon-efficient computational imaging methods are remarkably effective with only 1.0 to 3.0 detected photons per pixel, but they are not demonstrated at signal-to-background ratio (SBR) below 1.0 because their imaging accuracies degrade significantly in the presence of high background noise. We introduce a new approach to depth and reflectivity estimation that emphasizes the unmixing of contributions from signal and noise sources. At each pixel in an image, short-duration range gates are adaptively determined and applied to remove detections likely to be due to noise. For pixels with too few detecti...
Reconstructing a scene's 3D structure and reflectivity accurately with an active imaging system oper...
Reconstructing a scene’s 3D structure and reflectivity accurately with an active imaging system oper...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
Abstract—Capturing depth and reflectivity images at low light levels from active illumination of a s...
Light detection and ranging systems reconstruct scene depth from time-of-flight measurements. For lo...
Recent photon-efficient LIDAR methods are effective with 1.0 detected photon per pixel, half from ba...
We demonstrate a compressed sensing, photon counting lidar system based on the single-pixel camera. ...
Single-photon light detection and ranging (LiDAR) has been widely applied to 3D imaging in challengi...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
We present an imaging framework that is able to accurately reconstruct multiple depths at individual...
Depth profile reconstruction of a scene at low light levels using an active imaging setup has wide-r...
Light detection and ranging systems reconstruct scene depth from time-of-flight measurements. For lo...
Lidar is an increasingly prevalent technology for depth sensing, with applications including scienti...
Reconstructing a scene's 3D structure and reflectivity accurately with an active imaging system oper...
Reconstructing a scene’s 3D structure and reflectivity accurately with an active imaging system oper...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
Abstract—Capturing depth and reflectivity images at low light levels from active illumination of a s...
Light detection and ranging systems reconstruct scene depth from time-of-flight measurements. For lo...
Recent photon-efficient LIDAR methods are effective with 1.0 detected photon per pixel, half from ba...
We demonstrate a compressed sensing, photon counting lidar system based on the single-pixel camera. ...
Single-photon light detection and ranging (LiDAR) has been widely applied to 3D imaging in challengi...
Capturing depth and reflectivity images at low light levels from active illumination of a scene has ...
We present an imaging framework that is able to accurately reconstruct multiple depths at individual...
Depth profile reconstruction of a scene at low light levels using an active imaging setup has wide-r...
Light detection and ranging systems reconstruct scene depth from time-of-flight measurements. For lo...
Lidar is an increasingly prevalent technology for depth sensing, with applications including scienti...
Reconstructing a scene's 3D structure and reflectivity accurately with an active imaging system oper...
Reconstructing a scene’s 3D structure and reflectivity accurately with an active imaging system oper...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...