Tehnički vjesnik, Vol. 33 No. 2, 2026.
Izvorni znanstveni članak
https://doi.org/10.17559/TV-20250616002753
Vehicle Classification in Low-Resolution Surveillance Images Using RepViT and KernelWarehouse with Composite Loss
Huanzun Zhang
; Stony Brook Institute, Anhui University, Hefei 230039, China
Zhihong Fan
; Stony Brook Institute, Anhui University, Hefei 230039, China
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* Dopisni autor.
Sažetak
Vehicle classification within low-resolution surveillance scenarios remains a challenging task due to the subtle differences between classes and the lack of clear visual cues. This study aimed to improve vehicle classification performance under low-resolution surveillance scenarios.To this end, we proposed KRepIncep-AF, a convolutional neural network model that employed the backbone of InceptionNeXt-Tiny, RepViT modules, and a KernelWarehouse block for prioritized assimilation of spatial cues and contextual information. A compound loss function that combined linear adaptive cross-entropy and focal loss was applied to effectively address class imbalance and reinforce robustness. Comparative experiments were carried out using a vehicle dataset consisting of six classes and a resolution of 100 × 100 pixels. The proposed model attained an outstanding accuracy rate of 99.58%, with macro-average F1, precision, and recall values exceeding 99.5%, and outperformed several competitive baselines. These results demonstrate the effectiveness of the proposed architecture in constrained surveillance environments. Visual examination via heatmaps further established that the model highlighted silhouette-specific features such as bumpers and trailers. These observations indicated that improvements in model structure and the domain-specific application of loss functions could lead to considerable gains in classification accuracy, with meaningful implications for real-world traffic surveillance scenarios.
Ključne riječi
adaptive cross-entropy; convolutional neural networks; edge deployment; focal loss; image classification robustness; kernelwarehouse; lightweight model; RepViT; surveillance imagery; vehicle classification
Hrčak ID:
344992
URI
Datum izdavanja:
28.2.2026.
Posjeta: 202 *