title: |
F-boxes for filtering |
|
publication: |
||
part of series: |
Advances in Intelligent Systems Research | |
| pages: | 935 - 942 | |
DOI: |
To be assigned soon (how to use a DOI) | |
author(s): |
Olivier Strauss, Sebastien Destercke |
|
publication date: |
July 2011 |
|
keywords: |
Possibility measures, maxitive kernels, pboxes, clouds, signal filtering. |
|
abstract: |
Selecting a particular summative kernel (i.e., formally
equivalent to a probability distribution) when filtering
a digital signal can be a difficult task. An obvious solution to this problem is to filter with multiple kernels
rather than with a single one, but the computing cost of
such a solution can quickly become prohibitive (especially in real-time applications). Another alternative, the
one studied in this paper, is to consider kernels modeled
by imprecise probabilistic representations. Considering
such representations makes the use of numerical tools
coming from imprecise probability theory possible, such
as the Choquet integral, and allows one to work with
multiple kernels without multiplying too much the number of required computations. In this paper, we propose
to use the well-known p-box representation to filter a
digital signal. We show that the use p-boxes allows making more precise inferences than those obtained with
possibility distributions and clouds. We then discuss the
practical aspect of computing a filtered signal with pboxes, and finish by some experiments. |
|
copyright: |
©
Atlantis Press. This article is distributed under the
terms of the Creative Commons Attribution License, which permits
non-commercial use, distribution and reproduction in any medium,
provided the original work is properly cited. |
|
full text: |