Detection of roadside safety attributes plays an important role in road rating and improving road safety. In our previous research we have developed a technique for roadside attribute detection, however accuracy varies based on selected parameters so the main challenge is to develop a technique that can find optimal parameters. In this paper, we propose a parameter optimization technique that can optimize a Fully Convolutional Network (FCN) for road safety attribute detection. The technique incorporates an Evolutionary Algorithm (EA) as it can locate the global optimum in the search space and constructs better approximations to a solution than other optimization techniques. The aim is to optimize a number of parameters such as attribute ima...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
Road-safety inspection is an indispensable instrument for reducing road-accident fatalities contribu...
Due to the complex structure of observation based traffic accident data and the absence of an analyt...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Automatic detection of road safety attributes is an important step in designing a reliable road safe...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
Automatic assessment of road safety and conditions is essential for improving road infrastructure an...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
This paper presents a neural network based novel automated system that can analyze vehicle mounted v...
Extensive research efforts have been devoted to identify and improve roadway features that impact sa...
Extensive research efforts have been devoted to identify and improve roadway features that impact sa...
Road safety assessment is one of the most important parts of road transport safety management. When ...
One of the most crucial tasks for Intelligent Transportation Systems is to enhance driving safety. D...
Due to the complex structure of observation based traffic accident data and the absence of an analyt...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
Road-safety inspection is an indispensable instrument for reducing road-accident fatalities contribu...
Due to the complex structure of observation based traffic accident data and the absence of an analyt...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Even though, deep learning techniques demonstrate an outstanding performance in various applications...
Automatic detection of road safety attributes is an important step in designing a reliable road safe...
The manual systems for road safety are inefficient, very time consuming and prone to error. Automate...
Automatic assessment of road safety and conditions is essential for improving road infrastructure an...
This paper explores the vehicle detection problem and introduces an improved regional convolution ne...
This paper presents a neural network based novel automated system that can analyze vehicle mounted v...
Extensive research efforts have been devoted to identify and improve roadway features that impact sa...
Extensive research efforts have been devoted to identify and improve roadway features that impact sa...
Road safety assessment is one of the most important parts of road transport safety management. When ...
One of the most crucial tasks for Intelligent Transportation Systems is to enhance driving safety. D...
Due to the complex structure of observation based traffic accident data and the absence of an analyt...
Classification of roadside objects is very important task in identifying fire risk regions, analysin...
Road-safety inspection is an indispensable instrument for reducing road-accident fatalities contribu...
Due to the complex structure of observation based traffic accident data and the absence of an analyt...