This shows you the differences between two versions of the page.
| Both sides previous revisionPrevious revisionNext revision | Previous revision | ||
| en:safeav:maps:ai [2025/10/21 13:17] – [Deep Learning Architectures] kosnark | en:safeav:maps:ai [2025/10/21 13:18] (current) – [Data Requirements] kosnark | ||
|---|---|---|---|
| Line 74: | Line 74: | ||
| Robust perception requires exposure to the full range of operating conditions that a vehicle may encounter. | Robust perception requires exposure to the full range of operating conditions that a vehicle may encounter. | ||
| Datasets must include variations in: | Datasets must include variations in: | ||
| - | * **Sensor modalities** – data from cameras, LiDAR, radar, GNSS, and IMU, reflecting the multimodal nature of perception. | + | |
| - | * **Environmental conditions** – daytime and nighttime scenes, different seasons, weather effects such as rain, fog, or snow. | + | |
| - | * **Geographical and cultural contexts** – urban, suburban, and rural areas; diverse traffic rules and road signage conventions. | + | * **Environmental conditions** – daytime and nighttime scenes, different seasons, weather effects such as rain, fog, or snow. |
| - | * **Behavioral diversity** – normal driving, aggressive maneuvers, and rare events such as jaywalking or emergency stops. | + | * **Geographical and cultural contexts** – urban, suburban, and rural areas; diverse traffic rules and road signage conventions. |
| - | * **Edge cases** – rare but safety-critical situations, including near-collisions or sensor occlusions. | + | * **Behavioral diversity** – normal driving, aggressive maneuvers, and rare events such as jaywalking or emergency stops. |
| + | * **Edge cases** – rare but safety-critical situations, including near-collisions or sensor occlusions. | ||
| A balanced dataset should capture both common and unusual situations to ensure that perception models generalize safely beyond the training distribution. | A balanced dataset should capture both common and unusual situations to ensure that perception models generalize safely beyond the training distribution. | ||