Vulnerable road users (VRUs) are exposed to the highest risk in the road traffic environment. Analyzing contributing factors that affect injury severity facilitates injury severity prediction and further application in developing countermeasures to guarantee VRUs safety. Recently, machine learning approaches have been introduced, in which analyses tend to be one-sided and may ignore important information. To solve this problem, this paper proposes a comprehensive analytic framework that employs a deep learning model referred to as the stacked sparse autoencoder (SSAE) to predict the injury severity of traffic accidents based on contributing factors. The essential idea of the method is to integrate various analyses into an analytical framewo...
Nearly 5,000 people are killed and more than 418,000 are injured in weather-related traffic incident...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
Vulnerable road users (VRUs) represent a large portion of fatalities and injuries occurring on Europ...
Vulnerable road users (VRUs) are exposed to the highest risk in the road traffic environment. Analyz...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
Statistics affirm that almost half of deaths in traffic accidents were vulnerable road users, such a...
Despite the greatest efforts of the car industry's engineers and researchers, traffic accidents will...
Traffic safety has always been an important issue in sustainable transportation development, and the...
Investigation of the risk factors that contribute to the injury severity in motor vehicle crashes ha...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Nearly 5,000 people are killed and more than 418,000 are injured in weather-related traffic incident...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
Vulnerable road users (VRUs) represent a large portion of fatalities and injuries occurring on Europ...
Vulnerable road users (VRUs) are exposed to the highest risk in the road traffic environment. Analyz...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
The paper introduces a new dataset to assess the performance of machine learning algorithms in the p...
This study investigates the power of deep learning in predicting the severity of injuries when accid...
Statistics affirm that almost half of deaths in traffic accidents were vulnerable road users, such a...
Despite the greatest efforts of the car industry's engineers and researchers, traffic accidents will...
Traffic safety has always been an important issue in sustainable transportation development, and the...
Investigation of the risk factors that contribute to the injury severity in motor vehicle crashes ha...
Abstract —Road accidents are an inevitable part of everyday life. In most daily news reports, there ...
Traffic accidents on highways are a leading cause of death despite the development of traffic safety...
Machine-learning technology powers many aspects of modern society. Compared to the conventional mach...
Nearly 5,000 people are killed and more than 418,000 are injured in weather-related traffic incident...
The number of daily accidents due to road conditions, vehicle speed, weather conditions, e...
Vulnerable road users (VRUs) represent a large portion of fatalities and injuries occurring on Europ...