Functionally Modular and Interpretable Temporal Filtering for Robust Segmentation
J\"org Wagner, Volker Fischer, Michael Herman, Sven Behnke

TL;DR
This paper introduces a modular, interpretable temporal filtering method for segmentation in autonomous systems, improving robustness against data perturbations like sensor outages and adverse weather.
Contribution
It proposes a novel, functionally modularized temporal filter inspired by Bayesian estimation, enhancing interpretability and robustness in segmentation tasks.
Findings
Effective in handling missing frames and perturbations
Improves robustness of segmentation in challenging conditions
End-to-end trainable with synthetic data
Abstract
The performance of autonomous systems heavily relies on their ability to generate a robust representation of the environment. Deep neural networks have greatly improved vision-based perception systems but still fail in challenging situations, e.g. sensor outages or heavy weather. These failures are often introduced by data-inherent perturbations, which significantly reduce the information provided to the perception system. We propose a functionally modularized temporal filter, which stabilizes an abstract feature representation of a single-frame segmentation model using information of previous time steps. Our filter module splits the filter task into multiple less complex and more interpretable subtasks. The basic structure of the filter is inspired by a Bayes estimator consisting of a prediction and an update step. To make the prediction more transparent, we implement it using a…
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Taxonomy
TopicsAdvanced Vision and Imaging · Advanced Neural Network Applications · Image Enhancement Techniques
