This work deals with pedestrian detection via convolutional neural network which can be used in autonomous car driving systems to improve travel safety. The work focuses on the influence of the training dataset on the resulting network behavior. The Faster R-CNN with ResNet 101 as backbone network and the SSDLite with MobileNet v2 as backbone network meta-architectures were selected for parameter testing. Both networks achieved real-time detection while accuracy was 61.92 % for the Faster R-CNN and 31.72 % for the SSDLite
International audienceThe pedestrian detection has attracted considerable attention from research du...
The pedestrian attribute recognition task is becoming more popular daily because of its significant ...
Background: Self-driving cars, also known as automated cars are a form of vehicle that can move with...
People are the center of all kinds of social activities. In real-life scenario, people are the most ...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Pedestrian detection has always been a challenging task of computer vision research for many decades...
Pedestrian and crowd analysis is one of the oldest problems in the area of computer vision and image...
U ovom radu prikazana je detekcija pješaka temeljena na konvolucijskim neuronskim mrežama koristeći ...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
Self-driving cars, i.e., fully automated cars, will spread in the upcoming two decades, according to...
Object detection exists in many countries around the world after a recent growing interest for auton...
Aiming at the problem of low pedestrian target detection accuracy, we propose a detection algorithm ...
Many of the recent state-of-the-art object detection performances in computer vision evolved around ...
The problem of human detection in an image or video sequence is still a hot topic nowadays. It has b...
Deep Learning has revolutionized Computer Vision, and it is the core technology behind capabilities ...
International audienceThe pedestrian detection has attracted considerable attention from research du...
The pedestrian attribute recognition task is becoming more popular daily because of its significant ...
Background: Self-driving cars, also known as automated cars are a form of vehicle that can move with...
People are the center of all kinds of social activities. In real-life scenario, people are the most ...
Pedestrian detection is a rapidly growing field of computer vision with applications in smart cars, ...
Pedestrian detection has always been a challenging task of computer vision research for many decades...
Pedestrian and crowd analysis is one of the oldest problems in the area of computer vision and image...
U ovom radu prikazana je detekcija pješaka temeljena na konvolucijskim neuronskim mrežama koristeći ...
This paper is to present an efficient and fast deep learning algorithm based on neural networks for ...
Self-driving cars, i.e., fully automated cars, will spread in the upcoming two decades, according to...
Object detection exists in many countries around the world after a recent growing interest for auton...
Aiming at the problem of low pedestrian target detection accuracy, we propose a detection algorithm ...
Many of the recent state-of-the-art object detection performances in computer vision evolved around ...
The problem of human detection in an image or video sequence is still a hot topic nowadays. It has b...
Deep Learning has revolutionized Computer Vision, and it is the core technology behind capabilities ...
International audienceThe pedestrian detection has attracted considerable attention from research du...
The pedestrian attribute recognition task is becoming more popular daily because of its significant ...
Background: Self-driving cars, also known as automated cars are a form of vehicle that can move with...