Xtreme1 is an all-in-one data labeling and annotation platform for multimodal data training and supports 3D LiDAR point cloud, image, and LLM.
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Updated
Nov 13, 2024 - TypeScript
Xtreme1 is an all-in-one data labeling and annotation platform for multimodal data training and supports 3D LiDAR point cloud, image, and LLM.
C++ implementation to Detect, track and classify multiple objects using LIDAR scans or point cloud
Lidar Obstacle Detection
Create 3D labelled bounding boxes in RViz
LiDAR Guide
Using the KITTI dataset, we employed Open3D to visualize, downsample, segment with RANSAC, cluster via DBSCAN, create 3D bounding boxes, and perform surface reconstruction on point clouds.
Official Code for ShaSTA
Code and documents to support the Thesis: Progress Towards LiDAR Based Bicycle Detection in Urban Environments Edit Add topics
Simplifying LIDAR point cloud processing and rapid prototyping
EKF for Radar and Lidar measurements to estimate the position and velocity an object, for example a pedestrian
In this project we detect, segment and track the obstacles of an ego car and its custom implementation of KDTree, obstacle detection, segmentation, clustering and tracking algorithm in C++ and compare it to the inbuilt algorithm functions of PCL library on a LiDAR's point cloud data.
Unscented Kalman Filter (UKF) implementation to track vehicles using LiDAR and RADAR measurements
This Package is based on SORT (C++) Package
Camera-LIDAR Fusion Framework for detection and tracking.
SFND_Lidar_Obstacle_Detection
The Light Imaging Detection and Ranging (LIDAR) is a method for measuring distances (ranging) by illuminating the target with laser light and measuring the reflection with a sensor. The LIDAR Sensor escalates the entire mechanism with great efficiency which is notified with process and main activation codes.
An Arduino based system for autonomous gps based way-point navigation.
NSL-3130AA ROS2 USB interface
Trained a classifier to count other cars on the road from a dataset containing 3D points cloud from LIDARs.
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