Stereo cameras are crucial sensors for self-driving vehicles as they are low-cost and can be used to estimate depth. It can be used for multiple purposes, such as object detection, depth estimation, semantic segmentation, etc. In this paper, we propose a stereo vision-based perception framework for autonomous vehicles. It uses three deep neural networks simultaneously to perform free-space detection, lane boundary detection, and object detection on image frames captured using the stereo camera. The depth of the detected objects from the vehicle is estimated from the disparity image computed using two stereo image frames from the stereo camera. The proposed stereo perception framework runs at 7.4 Hz on the Nvidia Drive PX 2 hardware platform...
Nowadays, the people irresponsibility and incorrect behaviours are pointed out as the main cause of ...
Stereo based vision cameras are increasingly popular in terms of their usage in the commercial marke...
Abslruct-This paper presents a high accuracy, far range stereovision approach for driving environmen...
Stereo cameras are crucial sensors for self-driving vehicles as they are low-cost and can be used to...
In a cooperative automated driving scenario like platooning, the ego vehicle needs reliable and accu...
In this paper, we present a deep neural network based real-time integrated framework to detect objec...
In this paper, we propose an efficient approach to perform recognition and 3D localization of dynami...
In this contribution, we propose an system setup for the detection andclassification of objects in a...
Robust and accurate object detection are needed for the applications to mobile robots. Unfortunatel...
This paper presents a high accuracy stereovision sensor for 3D lane and obstacle detection in traffi...
Project AutoVision aims to develop localization and 3D scene perception capabilities for a self-driv...
Road safety is an important problem that still afflicts our city roads, even though a lot of work ha...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
This paper presents a vision system to be used on moving vehicles to increment road safety. Pairs of...
Convolutional Neural Networks combined with a state of the artstereo-matching method are used to fin...
Nowadays, the people irresponsibility and incorrect behaviours are pointed out as the main cause of ...
Stereo based vision cameras are increasingly popular in terms of their usage in the commercial marke...
Abslruct-This paper presents a high accuracy, far range stereovision approach for driving environmen...
Stereo cameras are crucial sensors for self-driving vehicles as they are low-cost and can be used to...
In a cooperative automated driving scenario like platooning, the ego vehicle needs reliable and accu...
In this paper, we present a deep neural network based real-time integrated framework to detect objec...
In this paper, we propose an efficient approach to perform recognition and 3D localization of dynami...
In this contribution, we propose an system setup for the detection andclassification of objects in a...
Robust and accurate object detection are needed for the applications to mobile robots. Unfortunatel...
This paper presents a high accuracy stereovision sensor for 3D lane and obstacle detection in traffi...
Project AutoVision aims to develop localization and 3D scene perception capabilities for a self-driv...
Road safety is an important problem that still afflicts our city roads, even though a lot of work ha...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
This paper presents a vision system to be used on moving vehicles to increment road safety. Pairs of...
Convolutional Neural Networks combined with a state of the artstereo-matching method are used to fin...
Nowadays, the people irresponsibility and incorrect behaviours are pointed out as the main cause of ...
Stereo based vision cameras are increasingly popular in terms of their usage in the commercial marke...
Abslruct-This paper presents a high accuracy, far range stereovision approach for driving environmen...