Publications by authors named "Augusto Ballardini"

Article Synopsis
  • Understanding urban intersections is vital for self-driving cars and Advanced Driver Assistance Systems (ADAS) since these areas account for a significant percentage of road fatalities.
  • The research investigates various methods for detecting and classifying intersection geometries using front-facing cameras, exploring both single-frame and temporal integration approaches with Deep Neural Networks (DNNs).
  • A new dataset is created through data augmentation using Generative Adversarial Networks (GANs) to enhance training data quality and generalizability, highlighting the importance of camera field of view over other factors.
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Anticipating pedestrian crossing behavior in urban scenarios is a challenging task for autonomous vehicles. Early this year, a benchmark comprising JAAD and PIE datasets have been released. In the benchmark, several state-of-the-art methods have been ranked.

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Detecting buildings in the surroundings of an urban vehicle and matching them to building models available on map services is an emerging trend in robotics localization for urban vehicles. In this paper, we present a novel technique, which improves a previous work by detecting building façade, their positions, and finding the correspondences with their 3D models, available in OpenStreetMap. The proposed technique uses segmented point clouds produced using stereo images, processed by a convolutional neural network.

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Autonomous driving systems are set to become a reality in transport systems and, so, maximum acceptance is being sought among users. Currently, the most advanced architectures require driver intervention when functional system failures or critical sensor operations take place, presenting problems related to driver state, distractions, fatigue, and other factors that prevent safe control. Therefore, this work presents a redundant, accurate, robust, and scalable LiDAR odometry system with fail-aware system features that can allow other systems to perform a safe stop manoeuvre without driver mediation.

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