Depth maps captured with time-of-flight cameras have
very low data quality: the image resolution is rather limited
and the level of random noise contained in the depth maps
is very high. Therefore, such flash lidars cannot be used
out of the box for high-quality 3D object scanning. To solve
this problem, we present LidarBoost, a 3D depth superresolution
method that combines several low resolution noisy
depth images of a static scene from slightly displaced viewpoints,
and merges them into a high-resolution depth image.
We have developed an optimization framework that uses a
data fidelity term and a geometry prior term that is tailored
to the specific characteristics of flash lidars. We demonstrate
both visually and quantitatively that LidarBoost produces
better results than previous methods from the literature