Real-time object detection is crucial in autonomous driving. To avoid catastrophic accidents, an autonomous car should detect objects with multiple cameras and make decisions within a certain time limit. Object detection systems can meet the real-time constraint by dynamically downsampling input images to proper scales according to their time budget. However, simply applying the same scale to all the images from multiple cameras can cause unnecessary accuracy loss because downsampling can incur a significant accuracy loss for some images. To reduce the accuracy loss while meeting the real-time constraint, this work proposes RTScale, a new adaptive real-time image scaling scheme that applies different scales to different images reflecting th...
Abstract — In the following paper, we present a framework for quickly training 2D object detectors f...
An autonomous navigation system relies on a number of sensors including radar, LIDAR and a visible l...
The goal of the project is to run an object detection algorithm on every frame of a video, thus allo...
Real-time object detection is crucial in autonomous driving. To avoid catastrophic accidents, an aut...
Autonomous driving has taken a leap in recent years due to the significant improvements in convoluti...
DoctorReal-time object detection is essential for autonomous vehicles. In autonomous driving, object...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
A thesis Submitted in Partial Fulfillment of the Requirements for the Degree of MASTER OF SCIENCE in...
Object detection is one of the most important and challenging research topics in computer vision. It...
Current anchor-free object detectors do not rely on anchors and obtain comparable accuracy with anch...
Department of Electrical EngineeringOver the past several years, the computer vision community has b...
An important problem in autonomous driving is to perceive objects even under challenging illuminatio...
Recently, deep learning-based object detection techniques have arisen alongside time-consuming train...
In advanced driver assistance systems (ADAS) or autonomous vehicle research, acquiring semantic info...
Detecting, counting, and classifying objects represent the most primary and challenging tasks in the...
Abstract — In the following paper, we present a framework for quickly training 2D object detectors f...
An autonomous navigation system relies on a number of sensors including radar, LIDAR and a visible l...
The goal of the project is to run an object detection algorithm on every frame of a video, thus allo...
Real-time object detection is crucial in autonomous driving. To avoid catastrophic accidents, an aut...
Autonomous driving has taken a leap in recent years due to the significant improvements in convoluti...
DoctorReal-time object detection is essential for autonomous vehicles. In autonomous driving, object...
Self-driving systems are commonly categorized into three subsystems: perception, planning, and contr...
A thesis Submitted in Partial Fulfillment of the Requirements for the Degree of MASTER OF SCIENCE in...
Object detection is one of the most important and challenging research topics in computer vision. It...
Current anchor-free object detectors do not rely on anchors and obtain comparable accuracy with anch...
Department of Electrical EngineeringOver the past several years, the computer vision community has b...
An important problem in autonomous driving is to perceive objects even under challenging illuminatio...
Recently, deep learning-based object detection techniques have arisen alongside time-consuming train...
In advanced driver assistance systems (ADAS) or autonomous vehicle research, acquiring semantic info...
Detecting, counting, and classifying objects represent the most primary and challenging tasks in the...
Abstract — In the following paper, we present a framework for quickly training 2D object detectors f...
An autonomous navigation system relies on a number of sensors including radar, LIDAR and a visible l...
The goal of the project is to run an object detection algorithm on every frame of a video, thus allo...