sl-perception eb61207532 feat(perception): dynamic obstacle velocity estimator (Issue #326)
Adds ObstacleVelocity/ObstacleVelocityArray msgs and an
ObstacleVelocityNode that clusters /scan points, tracks each centroid
with a constant-velocity Kalman filter, and publishes velocity vectors
on /saltybot/obstacle_velocities.

New messages (saltybot_scene_msgs):
  msg/ObstacleVelocity.msg      — obstacle_id, centroid, velocity,
                                  speed_mps, width_m, depth_m,
                                  point_count, confidence, is_static
  msg/ObstacleVelocityArray.msg — array wrapper with header

New files (saltybot_bringup):
  saltybot_bringup/_obstacle_velocity.py   — pure helpers (no ROS2 deps)
    KalmanTrack   constant-velocity 2-D KF: predict(dt) / update(centroid)
                  coasting counter → alive flag; confidence = age/n_init
    associate()   greedy nearest-centroid matching (O(N·M), strict <)
    ObstacleTracker  predict-all → associate → update/spawn → prune cycle
  saltybot_bringup/obstacle_velocity_node.py
    Subscribes /scan (BEST_EFFORT); reuses _lidar_clustering helpers;
    publishes ObstacleVelocityArray on /saltybot/obstacle_velocities
    Parameters: distance_threshold_m=0.20, min_points=3, range 0.05–12m,
                max_association_dist_m=0.50, max_coasting_frames=5,
                n_init_frames=3, q_pos=0.05, q_vel=0.50, r_pos=0.10,
                static_speed_threshold=0.10
  test/test_obstacle_velocity.py — 48 tests, all passing

Modified:
  saltybot_scene_msgs/CMakeLists.txt  — register new msgs
  saltybot_bringup/setup.py           — add obstacle_velocity console_script

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-03 06:53:04 -05:00
..

Jetson Nano — AI/SLAM Platform Setup

Self-balancing robot: Jetson Nano dev environment for ROS2 Humble + SLAM stack.

Stack

Component Version / Part
Platform Jetson Nano 4GB
JetPack 4.6 (L4T R32.6.1, CUDA 10.2)
ROS2 Humble Hawksbill
DDS CycloneDDS
SLAM slam_toolbox
Nav Nav2
Depth camera Intel RealSense D435i
LiDAR RPLIDAR A1M8
MCU bridge STM32F722 (USB CDC @ 921600)

Quick Start

# 1. Host setup (once, on fresh JetPack 4.6)
sudo bash scripts/setup-jetson.sh

# 2. Build Docker image
bash scripts/build-and-run.sh build

# 3. Start full stack
bash scripts/build-and-run.sh up

# 4. Open ROS2 shell
bash scripts/build-and-run.sh shell

Docs

Files

jetson/
├── Dockerfile              # L4T base + ROS2 Humble + SLAM packages
├── docker-compose.yml      # Multi-service stack (ROS2, RPLIDAR, D435i, STM32)
├── README.md               # This file
├── docs/
│   ├── pinout.md           # GPIO/I2C/UART pinout reference
│   └── power-budget.md     # Power budget analysis (10W envelope)
└── scripts/
    ├── entrypoint.sh       # Docker container entrypoint
    ├── setup-jetson.sh     # Host setup (udev, Docker, nvpmodel)
    └── build-and-run.sh    # Build/run helper

Power Budget (Summary)

Scenario Total
Idle 2.9W
Nominal (SLAM active) ~10.2W
Peak 15.4W

Target: 10W (MAXN nvpmodel). Use RPLIDAR standby + 640p D435i for compliance. See docs/power-budget.md for full analysis.