AssistTaxi: A Comprehensive Dataset for Taxiway Analysis and Autonomous Operations
This dataset addresses the need for high-quality data in aviation safety and autonomous systems, though it is incremental as it focuses on a new dataset rather than a novel method.
The authors introduced AssistTaxi, a dataset of over 300,000 images from two airports for taxiway analysis, aimed at advancing autonomous taxiing operations by enabling algorithm training and benchmarking.
The availability of high-quality datasets play a crucial role in advancing research and development especially, for safety critical and autonomous systems. In this paper, we present AssistTaxi, a comprehensive novel dataset which is a collection of images for runway and taxiway analysis. The dataset comprises of more than 300,000 frames of diverse and carefully collected data, gathered from Melbourne (MLB) and Grant-Valkaria (X59) general aviation airports. The importance of AssistTaxi lies in its potential to advance autonomous operations, enabling researchers and developers to train and evaluate algorithms for efficient and safe taxiing. Researchers can utilize AssistTaxi to benchmark their algorithms, assess performance, and explore novel approaches for runway and taxiway analysis. Addition-ally, the dataset serves as a valuable resource for validating and enhancing existing algorithms, facilitating innovation in autonomous operations for aviation. We also propose an initial approach to label the dataset using a contour based detection and line extraction technique.