en:safeav:curriculum:maps-m
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| en:safeav:curriculum:maps-m [2025/11/03 11:57] – airi | en:safeav:curriculum:maps-m [2025/11/05 11:17] (current) – airi | ||
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| ====== Module: Perception, Mapping, and Localization (Part 2) ====== | ====== Module: Perception, Mapping, and Localization (Part 2) ====== | ||
| - | | **Study level** | ||
| - | | **ECTS credits** | ||
| - | | **Study forms** | ||
| - | | **Module aims** | ||
| - | | **Pre-requirements** | ||
| - | | **Learning outcomes** | ||
| - | | ** Topics ** | 1. Sources of Instability and Uncertainty: | ||
| - | | **Type of assessment** | ||
| - | | **Learning methods** | ||
| - | | **AI involvement** | ||
| - | ^ **Recommended tools and environments** | | | ||
| - | ^ **Verification and Validation focus** | | | ||
| - | ^ **Relevant standards and regulatory frameworks** | | | ||
| + | ^ **Study level** | Master | | ||
| + | ^ **ECTS credits** | 1 ECTS | | ||
| + | ^ **Study forms** | Hybrid or fully online | | ||
| + | ^ **Module aims** | The aim of the module is to introduce instability and uncertainty aspects in perception, mapping and localisation for autonomous systems. The course develops students’ ability to model sensor noise and uncertainty, | ||
| + | ^ **Pre-requirements** | Basic knowledge of probability and statistics, linear algebra and perception or sensor fusion concepts, as well as programming skills in Python or C++. Familiarity with robotics, computer vision, control theory, machine learning or ROS-based tools is recommended but not mandatory. | | ||
| + | ^ **Learning outcomes** | **Knowledge**\\ • Distinguish between aleatoric and epistemic uncertainty and describe their impact on perception and mapping.\\ • Explain sources of instability such as sensor noise, occlusions, quantization, | ||
| + | ^ **Topics** | 1. Sources of Instability and Uncertainty: | ||
| + | ^ **Type of assessment** | The prerequisite of a positive grade is a positive evaluation of module topics and presentation of practical work results with required documentation. | | ||
| + | ^ **Learning methods** | **Lecture** — Explore theoretical principles of uncertainty, | ||
| + | ^ **AI involvement** | AI tools may assist in simulating uncertainty propagation, | ||
| + | ^ **Recommended tools and environments** | ROS2, MATLAB, KITTI, NuScenes, Waymo | | ||
| + | ^ **Verification and Validation focus** | | | ||
| + | ^ **Relevant standards and regulatory frameworks** | ISO 26262, ISO 21448 (SOTIF) | | ||
en/safeav/curriculum/maps-m.1762163878.txt.gz · Last modified: by airi
