Computationally Efficient Target Classification in Multispectral Image Data with Deep Neural Networks
Lukas Cavigelli, Dominic Bernath, Michele Magno, Luca Benini

TL;DR
This paper demonstrates that multispectral data combined with deep neural networks can significantly improve target classification accuracy in urban surveillance, enabling efficient, high-precision detection with minimal training data.
Contribution
The study introduces a multispectral imaging approach with DNNs for urban target classification, achieving high accuracy and reduced computational effort, even with limited training data.
Findings
Achieved 99.1% per-pixel accuracy in target classification.
Multispectral data improves accuracy or reduces computation by 3x.
High accuracy with only 30 labeled images.
Abstract
Detecting and classifying targets in video streams from surveillance cameras is a cumbersome, error-prone and expensive task. Often, the incurred costs are prohibitive for real-time monitoring. This leads to data being stored locally or transmitted to a central storage site for post-incident examination. The required communication links and archiving of the video data are still expensive and this setup excludes preemptive actions to respond to imminent threats. An effective way to overcome these limitations is to build a smart camera that transmits alerts when relevant video sequences are detected. Deep neural networks (DNNs) have come to outperform humans in visual classifications tasks. The concept of DNNs and Convolutional Networks (ConvNets) can easily be extended to make use of higher-dimensional input data such as multispectral data. We explore this opportunity in terms of…
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