194 research outputs found
Vision Language Models in Autonomous Driving and Intelligent Transportation Systems
The applications of Vision-Language Models (VLMs) in the fields of Autonomous
Driving (AD) and Intelligent Transportation Systems (ITS) have attracted
widespread attention due to their outstanding performance and the ability to
leverage Large Language Models (LLMs). By integrating language data, the
vehicles, and transportation systems are able to deeply understand real-world
environments, improving driving safety and efficiency. In this work, we present
a comprehensive survey of the advances in language models in this domain,
encompassing current models and datasets. Additionally, we explore the
potential applications and emerging research directions. Finally, we thoroughly
discuss the challenges and research gap. The paper aims to provide researchers
with the current work and future trends of VLMs in AD and ITS
Negative Results in Computer Vision: A Perspective
A negative result is when the outcome of an experiment or a model is not what
is expected or when a hypothesis does not hold. Despite being often overlooked
in the scientific community, negative results are results and they carry value.
While this topic has been extensively discussed in other fields such as social
sciences and biosciences, less attention has been paid to it in the computer
vision community. The unique characteristics of computer vision, particularly
its experimental aspect, call for a special treatment of this matter. In this
paper, I will address what makes negative results important, how they should be
disseminated and incentivized, and what lessons can be learned from cognitive
vision research in this regard. Further, I will discuss issues such as computer
vision and human vision interaction, experimental design and statistical
hypothesis testing, explanatory versus predictive modeling, performance
evaluation, model comparison, as well as computer vision research culture
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