FORTRESS: Function-composition Optimized Real-Time Resilient Structural Segmentation via Kolmogorov-Arnold Enhanced Spatial Attention Networks
Christina Thrainer, Md Meftahul Ferdaus, Mahdi Abdelguerfi, Christian Guetl, Steven Sloan, Kendall N. Niles, Ken Pathak

TL;DR
FORTRESS is a novel neural network architecture that achieves high-accuracy structural defect segmentation in real-time by combining depthwise separable convolutions with adaptive Kolmogorov-Arnold Networks, significantly reducing parameters and computation.
Contribution
The paper introduces FORTRESS, a new architecture that balances accuracy and efficiency through innovative function composition and multi-scale attention, outperforming existing methods in resource-constrained settings.
Findings
91% parameter reduction compared to baseline
3x faster inference speed
State-of-the-art segmentation performance on benchmarks
Abstract
Automated structural defect segmentation in civil infrastructure faces a critical challenge: achieving high accuracy while maintaining computational efficiency for real-time deployment. This paper presents FORTRESS (Function-composition Optimized Real-Time Resilient Structural Segmentation), a new architecture that balances accuracy and speed by using a special method that combines depthwise separable convolutions with adaptive Kolmogorov-Arnold Network integration. FORTRESS incorporates three key innovations: a systematic depthwise separable convolution framework achieving a 3.6x parameter reduction per layer, adaptive TiKAN integration that selectively applies function composition transformations only when computationally beneficial, and multi-scale attention fusion combining spatial, channel, and KAN-enhanced features across decoder levels. The architecture achieves remarkable…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · 3D Surveying and Cultural Heritage · Advanced Neural Network Applications
