We present a new method for noise removal on static and time-varying range data. Our approach predicts the restored position of a perturbed vertex using similar vertices in its neighborhood. It defines the required similarity measure in a new non-local fashion which compares regions of the surface instead of point pairs. This allows our algorithm to obtain a more accurate denoising result than previous state-of-the-art approaches and, at the same time, to better preserve fine features of the surface. Furthermore, our approach is easy to implement, effective, and flexibly applicable to different types of scanned data. We demonstrate this on several static and interesting new time-varying datasets obtained using laser and structured ...
We propose a simple and fast algorithm called PatchLift for computing distances between patches (con...
This article proposes a fast and open-source implementation of the well-known Non-Local Means (NLM) ...
We give a brief discussion of denoising algorithms for depth data and review our unified approach to...
We present a new method for noise removal on static and time-varying range data. Our approach predic...
We present a novel algorithm for accurately denoising static and time-varying range data. Our approa...
We present a technique for accurate denoising of time-varying range data. It is inspired by the idea...
We present a novel algorithm for accurately denoising static and time-varying range data. Our approa...
This article addresses the problem of denoising 3D data from LIDAR. It is a step often required to a...
International audienceThis article addresses the problem of denoising 3D data from LIDAR. It is a st...
Abstract We present a simple denoising technique for geometric data rep-resented as a semiregular me...
International audienceDenoising surfaces is a a crucial step in the surface processing pipeline. Thi...
Abstract: Different from previous local smoothing filters based on local geometry signal, a novel d...
This paper presents an anisotropic denoising/smoothing algorithm for point-sampled surfaces. Motivat...
We present a simple denoising technique for geometric data represented as a semiregular mesh, based ...
We present in this paper a new denoising method called non-local means. The method is based on a sim...
We propose a simple and fast algorithm called PatchLift for computing distances between patches (con...
This article proposes a fast and open-source implementation of the well-known Non-Local Means (NLM) ...
We give a brief discussion of denoising algorithms for depth data and review our unified approach to...
We present a new method for noise removal on static and time-varying range data. Our approach predic...
We present a novel algorithm for accurately denoising static and time-varying range data. Our approa...
We present a technique for accurate denoising of time-varying range data. It is inspired by the idea...
We present a novel algorithm for accurately denoising static and time-varying range data. Our approa...
This article addresses the problem of denoising 3D data from LIDAR. It is a step often required to a...
International audienceThis article addresses the problem of denoising 3D data from LIDAR. It is a st...
Abstract We present a simple denoising technique for geometric data rep-resented as a semiregular me...
International audienceDenoising surfaces is a a crucial step in the surface processing pipeline. Thi...
Abstract: Different from previous local smoothing filters based on local geometry signal, a novel d...
This paper presents an anisotropic denoising/smoothing algorithm for point-sampled surfaces. Motivat...
We present a simple denoising technique for geometric data represented as a semiregular mesh, based ...
We present in this paper a new denoising method called non-local means. The method is based on a sim...
We propose a simple and fast algorithm called PatchLift for computing distances between patches (con...
This article proposes a fast and open-source implementation of the well-known Non-Local Means (NLM) ...
We give a brief discussion of denoising algorithms for depth data and review our unified approach to...