In order to deal with the scaling problem of volumetric map representations, we propose spatially local methods for high-ratio compression of 3D maps, represented as truncated signed distance fields. We show that these compressed maps can be used as meaningful descriptors for selective decompression in scenarios relevant to robotic applications. As compression methods, we compare using PCA-derived low-dimensional bases to nonlinear auto-encoder networks. Selecting two application-oriented performance metrics, we evaluate the impact of different compression rates on reconstruction fidelity as well as to the task of map-aided ego-motion estimation. It is demonstrated that lossily reconstructed distance fields used as cost functions for ego-mo...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
This paper contributes a novel learning-based method for aggressive task-driven compression of depth...
Creating accurate maps of complex, unknown environments is of utmost importance for truly autonomous...
In order to deal with the scaling problem of volumetric map representations, we propose spatially lo...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
We present a novel 3D mapping method leveraging the recent progress in neural implicit representatio...
We present a novel 3D mapping method leveraging the recent progress in neural implicit representatio...
We present a novel approach to infer volumetric reconstructions from a single viewport, based only o...
Robots require high-quality mapsâinternal representations of their operating workspaceâto localise, ...
Representing geometry data as voxels allows for a massive amount of detail that can be rendered in r...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
Robots require high-quality maps—internal representations of their operating workspace—to localise, ...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
This paper contributes a novel learning-based method for aggressive task-driven compression of depth...
Creating accurate maps of complex, unknown environments is of utmost importance for truly autonomous...
In order to deal with the scaling problem of volumetric map representations, we propose spatially lo...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
This thesis is concerned with topics related to dense mapping of large scale three-dimensional space...
We present a novel 3D mapping method leveraging the recent progress in neural implicit representatio...
We present a novel 3D mapping method leveraging the recent progress in neural implicit representatio...
We present a novel approach to infer volumetric reconstructions from a single viewport, based only o...
Robots require high-quality mapsâinternal representations of their operating workspaceâto localise, ...
Representing geometry data as voxels allows for a massive amount of detail that can be rendered in r...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
Robots require high-quality maps—internal representations of their operating workspace—to localise, ...
With the increased availability of GPUs and multicore CPUs, volumetric map representations are an in...
This paper contributes a novel learning-based method for aggressive task-driven compression of depth...
Creating accurate maps of complex, unknown environments is of utmost importance for truly autonomous...