--- task_categories: - text-classification license: apache-2.0 tags: - code - Humanoid - 6D pose - point cloud - Robotics size_categories: - 1k-10k --- # 🤖 Anode AI: Humanoid Kinetic Fleet (v1.0) **High-Fidelity Synthetic Tensors for Next-Gen Humanoid Perception & Control.** Anode AI’s **Humanoid Kinetic Fleet** is a mathematically deterministic synthetic dataset designed to bridge the Sim2Real gap for domestic and industrial humanoid robotics. Unlike standard computer vision datasets, this collection includes full **6-DoF ground truth**, **kinematic torque vectors**, and **Gaussian stochastic noise** modeled on real-world 24GHz radar and LiDAR interference. --- ## 📊 Dataset Summary - **Total Records:** 1,240,000+ Frames - **Format:** `.jsonl.gz` (Compressed JSON Lines) - **Capture Rate:** 90Hz (Temporal Coherence) - **Domain:** Domestic Environments (Kitchen, Living Room, Dining) - **Physics Engine:** Anode Mud Engine v2.1 (Euler Integration) --- ## 🛠 Data Structure & Schema Each record contains a multi-modal snapshot of the robot's state and its environment. ### 1. Robot Kinematics - **6-DoF Pose:** Precise [x, y, z] and Quaternions for the base and end-effectors. - **Joint Dynamics:** 18-axis joint angles and velocities. - **Force Feedback:** Torque vectors (Nm) and gripper pressure (N). ### 2. Semantic Intelligence - **Object Metadata:** Includes `mass_kg` and `kinetic_energy_j` for interaction logic. - **Intent Prediction:** Behavioral labels for dynamic entities (e.g., `Child_5yo_Running`). - **Threat Vectors:** Closing speeds and potential impact time calculations. ### 3. Sensor Fidelity (Stochastic Layer) - **Gaussian Noise:** Modeled via Box-Muller transforms to simulate sensor jitter. - **Domain Randomization:** Variable lighting (Lux), texture shifts, and color variations. --- ## 🔬 Technical Specifications | Parameter | Specification | Logic | | :--- | :--- | :--- | | **Noise Model** | Gaussian (Box-Muller) | Sustainable Real-World Noise | | **Physics Integration** | Euler (dt=0.1s) | Kinematic Continuity | | **Integrity Check** | SHA-256 | Cryptographic Data Provenance | | **Coordinate System** | RHS (Right-Handed) | Standard Robotics Convention | --- ## 🚀 Usage This dataset is optimized for: 1. **Reinforcement Learning (RL):** Training humanoids for object manipulation using mass/torque metadata. 2. **Edge-Case Detection:** Testing model failure points in low-light/high-clutter scenarios. 3. **Sensor Fusion:** Aligning 24GHz Radar returns with LiDAR point clouds.