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ADAS Car - with Collision Avoidance System (CAS) - on Indian Roads using LIDAR-Camera Low-Level Sensor Fusion. DIY Gadget built with Raspberry Pi, RP LIDAR A1, Pi Cam V2, LED SHIM, NCS 2 and accessories like speaker, power bank etc
Thermal imaging is crucial in Advanced driver assistance systems(ADAS) and medical field. Head tracking alongwith body gives an advantage of ability to predict the heading direction.
This is an implementation of an adaptive cruise control system based on a computer vision pipeline. This work is based on YOLACT, a State-Of-The-Art real-time instance segmentation network. You're welcome to test and try our code, we hope you'll enjoy this work!
This repository contains the final project work for Autonomous Driving Technologies class. Robust lane detection, Stanley control for steering, UDP communication between 2 systems, and traffic sign detectors form an autonomous navigation system.
Detecting various irregularities in road surfaces using images which can be integrated with an ADAS based vehicular navigation system to provide assistance while driving.
Designed and built a prototype of a vehicle that provides a predictive model with maximum accuracy by using TensorFlow as part of an unsupervised machine learning algorithm along with that ADAS feature is used based on input factors like driver’s fatigue, speed, and distance between two vehicles.