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license: apache-2.0 |
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task_categories: |
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- object-detection |
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language: |
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- en |
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pretty_name: 'SimData-NuScenes: Synthetic Autonomous Driving Dataset' |
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size_categories: |
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- 100B<n<1T |
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--- |
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# Dataset Card for Dataset Name |
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<!-- Provide a quick summary of the dataset. --> |
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**SimData-NuScenes** is a large-scale synthetic dataset generated from high-fidelity simulation environments using **aiSim**. |
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By leveraging **aiSim's** advanced physics engine and deterministic sensor modeling, we ensure that every frame maintains **high-quality visual fidelity and physical accuracy**. This makes the dataset particularly effective for training and validating perception algorithms where precision is paramount. |
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The dataset follows the **NuScenes format (v1.0-custom)** and covers diverse environments including highways, complex urban areas, and parking lots across different geographic styles (US, Europe, Japan). |
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## Dataset Details |
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### Key Features |
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- **Format**: Fully compatible with the `nuscenes-devkit`. |
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- **Scale**: Contains **45 scenes** derived from **15 distinct maps**. |
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- **Diversity**: Covers Highway, Urban, and Parking scenarios. |
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- **Volume**: Approximately **18,000+ frames** per sensor (Camera/LiDAR). |
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### Sensor Layout |
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<div align="center"> |
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<img src="https://cdn-uploads.huggingface.co/production/uploads/69367df980cb6886b08b3cc9/Uf1-Txyyx2tycRjwP-ZwJ.png" width="80%" /> |
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</div> |
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### Overview |
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6 annotated surround-view camera images and BEV ground truth with LiDAR point clouds. |
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<div align="center"> |
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<img src="https://cdn-uploads.huggingface.co/production/uploads/69367df980cb6886b08b3cc9/4uB-JKa9_HikgdcZfi31y.jpeg" width="80%" /> |
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</div> |
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## Dataset Statistics (统计数据) |
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The dataset metadata is organized as follows: |
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| Metric | Count | |
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| :--- | :--- | |
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| **Total Logs/Scenes** | 45 | |
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| **Maps** | 15 | |
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| **Annotated Samples (Keyframes)** | 1,796 | |
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| **Sample Data (Total Frames)** | 215,472 | |
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| **Total Annotations** | 64,190 | |
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| **Ego Poses** | 17,956 | |
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| **Categories** | 10 | |
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| **Sensors** | 12 (Cameras, LiDARs, Radar) | |
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## Object Categories (标注类别) |
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The dataset includes 3D bounding box annotations for the following **10 classes**: |
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1. `Car` |
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2. `Truck` |
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3. `Bus` |
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4. `Van` |
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5. `Trailer` |
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6. `Pedestrian` |
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7. `Motorcycle` |
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8. `Bicycle` |
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9. `TrafficCone` |
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10. `Barricade` |
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## Scenarios & Maps (场景与地图详情) |
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The dataset is constructed from **15 high-definition maps**, categorized into three main environment types. Each map contains approximately 3 scenarios. |
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### 🛣️ Highway Environments |
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| Map Name | Description | |
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| :--- | :--- | |
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| **Highway_US-CA_SR85Sunnyvale** | US Highway scenario (SR85), sunny/clear weather. | |
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| **Highway_US-CA_Construction** | Highway construction zone with barriers and cones. | |
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| **Highway_HU_Godollo** | European style highway environment. | |
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| **Highway_US-CA_230Junipero** | Junipero Serra West Walley highway section. | |
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### 🏙️ Urban Environments |
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| Map Name | Description | |
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| :--- | :--- | |
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| **Urban_US-CA_SanFranciscoCity** | Dense urban downtown environment (SF style). | |
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| **Urban_US-CA_SF_OuterSunset** | Residential/Suburban area in San Francisco. | |
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| **Urban_HU_R7BudafokRoundabout** | European urban scene featuring a roundabout. | |
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| **Urban_Synth_USCity** | Synthetic US city with crowded traffic (`US_CrowdedCity`). | |
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| **Urban_Synth_USCrossingStreet** | Urban intersection and crossing scenarios. | |
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| **Urban_Synth_JapanCity** | Japanese style urban environment (LHT - Left Hand Traffic). | |
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| **Parking_Synth_UrbanSpots_LHT** | Urban street parking scenarios. | |
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### 🅿️ Parking Environments |
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| Map Name | Description | |
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| :--- | :--- | |
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| **Parking_US-CA_SanJoseMall** | Indoor garage environment. | |
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| **Parking_US-CA_SanJoseAlamitos** | Outdoor parking lot scenario. | |
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## How to Use (使用方法) |
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Since this dataset follows the NuScenes schema, you can use the standard [nuscenes-devkit](https://github.com/nutonomy/nuscenes-devkit) to load and visualize the data. |
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### Installation |
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```bash |
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pip install nuscenes-devkit |