Multi-Sensor Fusion via Reduction of Dimensionality
Alon Schclar

TL;DR
This paper introduces a novel dimensionality reduction method based on diffusion processes and eigen-decomposition, improving efficiency and noise removal in high-dimensional data analysis across various applications.
Contribution
The paper presents a new integrated methodology combining diffusion-based dimensionality reduction with practical algorithms for diverse multi-sensor data analysis tasks.
Findings
Effective segmentation and anomaly detection in hyper-spectral images
Successful segmentation of multi-contrast MRI images
Accurate classification of spectral and acoustic signatures
Abstract
Large high-dimensional datasets are becoming more and more popular in an increasing number of research areas. Processing the high dimensional data incurs a high computational cost and is inherently inefficient since many of the values that describe a data object are redundant due to noise and inner correlations. Consequently, the dimensionality, i.e. the number of values that are used to describe a data object, needs to be reduced prior to any other processing of the data. The dimensionality reduction removes, in most cases, noise from the data and reduces substantially the computational cost of algorithms that are applied to the data. In this thesis, a novel coherent integrated methodology is introduced (theory, algorithm and applications) to reduce the dimensionality of high-dimensional datasets. The method constructs a diffusion process among the data coordinates via a random walk.…
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Taxonomy
TopicsImage and Object Detection Techniques · Target Tracking and Data Fusion in Sensor Networks · Image Processing Techniques and Applications
