KIT MOMA: A Mobile Machines Dataset
Yusheng Xiang, Hongzhe Wang, Tianqing Su, Ruoyu Li, Christine Brach,, Samuel S. Mao, Marcus Geimer

TL;DR
The paper introduces KIT MOMA, a public dataset for mobile machine detection in construction sites, providing a benchmark and trained models to advance autonomous driving research for mobile machines.
Contribution
It presents a new, challenging dataset for mobile machine detection, along with trained models and benchmarks to facilitate progress in autonomous mobile machine technology.
Findings
YOLO v3 performs well on the dataset
The dataset includes real scene images from construction sites
Trained weights are provided for industry use
Abstract
Mobile machines typically working in a closed site, have a high potential to utilize autonomous driving technology. However, vigorously thriving development and innovation are happening mostly in the area of passenger cars. In contrast, although there are also many research pieces about autonomous driving or working in mobile machines, a consensus about the SOTA solution is still not achieved. We believe that the most urgent problem that should be solved is the absence of a public and challenging visual dataset, which makes the results from different researches comparable. To address the problem, we publish the KIT MOMA dataset, including eight classes of commonly used mobile machines, which can be used as a benchmark to evaluate the SOTA algorithms to detect mobile construction machines. The view of the gathered images is outside of the mobile machines since we believe fixed cameras on…
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Taxonomy
TopicsOptimization and Search Problems · Advanced Neural Network Applications · IoT and Edge/Fog Computing
