Explainable Part-Based Vehicle Classifier with Spatial Awareness
Andreas Caduff (1), Klaus Zahn (1), Jonas Hofstetter (1), Martin Rechsteiner (1), Patrick Flaig (2) ((1) Competence Center for Intelligent Sensors, Networks, Lucerne University of Applied Science, Art (2) SICK AG)

TL;DR
This paper enhances a part-based vehicle classification method by integrating spatial awareness, improving robustness and interpretability while maintaining accuracy, advancing ITS applications.
Contribution
It introduces spatial probability maps into a part-based vehicle classifier, improving robustness and interpretability without sacrificing accuracy.
Findings
The spatially aware method outperforms previous binary decision approaches.
The approach achieves comparable accuracy to end-to-end CNNs.
Enhanced robustness reduces false part detections in vehicle classification.
Abstract
In the area of Intelligent Transportation Systems (ITS), fine-grained vehicle classification systems play an essential role. Recently, the authors have presented a novel vision-based classification approach in which standard end-to-end Convolutional Neural Networks (CNNs) have been decomposed into 1) a CNN-based detector for semantically strong vehicle parts, followed by 2) feature construction and 3) final classification by a decision tree. In contrast to conventional CNNs, this allows both easy extensibility to new vehicle categories - without the need to fully retrain the part detector - and an important step towards the interpretability of the model, removing partially the black-box nature inherent to CNNs. Here we present an important extension of this approach that now incorporates spatial awareness of the vehicle parts: while the feature construction 2) of the previous approach…
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