Multi-Sensor Conflict Measurement and Information Fusion

03/12/2018
by   Pan Wei, et al.
0

In sensing applications where multiple sensors observe the same scene, fusing sensor outputs can provide improved results. However, if some of the sensors are providing lower quality outputs, the fused results can be degraded. In this work, a multi-sensor conflict measure is proposed which estimates multi-sensor conflict by representing each sensor output as interval-valued information and examines the sensor output overlaps on all possible n-tuple sensor combinations. The conflict is based on the sizes of the intervals and how many sensors output values lie in these intervals. In this work, conflict is defined in terms of how little the output from multiple sensors overlap. That is, high degrees of overlap mean low sensor conflict, while low degrees of overlap mean high conflict. This work is a preliminary step towards a robust conflict and sensor fusion framework. In addition, a sensor fusion algorithm is proposed based on a weighted sum of sensor outputs, where the weights for each sensor diminish as the conflict measure increases. The proposed methods can be utilized to (1) assess a measure of multi-sensor conflict, and (2) improve sensor output fusion by lessening weighting for sensors with high conflict. Using this measure, a simulated example is given to explain the mechanics of calculating the conflict measure, and stereo camera 3D outputs are analyzed and fused. In the stereo camera case, the sensor output is corrupted by additive impulse noise, DC offset, and Gaussian noise. Impulse noise is common in sensors due to intermittent interference, a DC offset a sensor bias or registration error, and Gaussian noise represents a sensor output with low SNR. The results show that sensor output fusion based on the conflict measure shows improved accuracy over a simple averaging fusion strategy.

READ FULL TEXT
research
02/10/2020

iDCR: Improved Dempster Combination Rule for Multisensor Fault Diagnosis

Data gathered from multiple sensors can be effectively fused for accurat...
research
04/19/2022

Sensor Data Fusion in Top-View Grid Maps using Evidential Reasoning with Advanced Conflict Resolution

We present a new method to combine evidential top-view grid maps estimat...
research
03/12/2018

Measuring Conflict in a Multi-Source Environment as a Normal Measure

In a multi-source environment, each source has its own credibility. If t...
research
06/05/2018

Multi-sensor data fusion based on a generalised belief divergence measure

Multi-sensor data fusion technology plays an important role in real appl...
research
04/07/2022

Learning Online Multi-Sensor Depth Fusion

Many hand-held or mixed reality devices are used with a single sensor fo...
research
03/11/2018

Cubic Range Error Model for Stereo Vision with Illuminators

Use of low-cost depth sensors, such as a stereo camera setup with illumi...
research
07/04/2012

Use of Dempster-Shafer Conflict Metric to Detect Interpretation Inconsistency

A model of the world built from sensor data may be incorrect even if the...

Please sign up or login with your details

Forgot password? Click here to reset