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Title Simplified Machine Learning Model As An Intelligent Support For Safe Urban Cycling
ID_Doc 48794
Authors Hernández-Herrera A.; Rubio-Espino E.; Álvarez-Vargas R.; Ponce-Ponce V.H.
Year 2025
Published Applied Sciences (Switzerland), 15, 3
DOI http://dx.doi.org/10.3390/app15031395
Abstract Urban cycling is a sustainable mode of transportation in large cities, and it offers many advantages. It is an eco-friendly means of transport that is accessible to the population and easy to use. Additionally, it is more economical than other means of transportation. Urban cycling is beneficial for physical health and mental well-being. Achieving sustainable mobility and the evolution towards smart cities demands a comprehensive analysis of all the essential aspects that enable their inclusion. Road safety is particularly important, which must be prioritized to ensure safe transportation and reduce the incidence of road accidents. In order to help reduce the number of accidents that urban cyclists are involved in, this work proposes an alternative solution in the form of an intelligent computational assistant that utilizes simplified machine learning (SML) to detect potential risks of unexpected collisions. This technological approach serves as a helpful alternative to the current problem. Through our methodology, we were able to identify the problem involved in the research, design, and development of the solution proposal; collect and analyze data; and obtain preliminary results. These results experimentally demonstrate how the proposed model outperforms most state-of-the-art models that use a metric learning layer for small image sets. © 2025 by the authors.
Author Keywords contrastive learning; few-shot learning; intelligent cycling support; one-shot learning; urban cycling


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