Abstract
Efficient object learning, detection, and 3D localization are critical for autonomous systems op-erating in dynamic environments. This research focuses on developing an AI-driven framework that enables fast object learning with minimal data, robust real-time detection, and precise 3D localization within a multi-layered map representation. The proposed system integrates deep learning-based perception with spatial mapping techniques to create an adaptive environment model that enhances robot autonomy and interaction. A key innovation is using a multi-layered map, which fuses geometric, semantic, and temporal information to provide a comprehensive scene understanding. This allows real-time adaptation to environmental changes and intuitive interaction through a user-friendly interface. The system aims to support applications in mobile robotics, augmented reality, and human-robot collaboration, enabling efficient navigation, ob-ject manipulation, and task planning in complex, unstructured environments. Experimental re-sults demonstrate the approach's effectiveness in achieving high-speed, accurate object learning and localization while maintaining computational efficiency.
| Originalsprache | Deutsch (Österreich) |
|---|---|
| Seiten | 1-3 |
| Seitenumfang | 3 |
| Publikationsstatus | Veröffentlicht - 20 Sep. 2025 |
| Veranstaltung | 1st Fachtagung Katastrophenforschung: Katastrophenforschung trifft Einsatzpraxis – Drohnen und Robotik im Fokus - Messe Wels, Wels, Österreich Dauer: 18 Sep. 2025 → 20 Sep. 2025 https://www.dcna.at/index.php/de/fachtagung-katastrophenforschung-2025.html |
Konferenz
| Konferenz | 1st Fachtagung Katastrophenforschung |
|---|---|
| Land/Gebiet | Österreich |
| Ort | Wels |
| Zeitraum | 18.09.2025 → 20.09.2025 |
| Internetadresse |
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