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Main Authors: Mohan, Karthik, Singh, Sonam, Kale, Amit Arvind
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.06096
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author Mohan, Karthik
Singh, Sonam
Kale, Amit Arvind
author_facet Mohan, Karthik
Singh, Sonam
Kale, Amit Arvind
contents The rapid development of Vision-Language models (VLMs) and Multimodal Language Models (MLLMs) in autonomous driving research has significantly reshaped the landscape by enabling richer scene understanding, context-aware reasoning, and more interpretable decision-making. However, a lot of existing work often relies on either single-view encoders that fail to exploit the spatial structure of multi-camera systems or operate on aggregated multi-view features, which lack a unified spatial representation, making it more challenging to reason about ego-centric directions, object relations, and the wider context. We thus present BeLLA, an end-to-end architecture that connects unified 360° BEV representations with a large language model for question answering in autonomous driving. We primarily evaluate our work using two benchmarks - NuScenes-QA and DriveLM, where BeLLA consistently outperforms existing approaches on questions that require greater spatial reasoning, such as those involving relative object positioning and behavioral understanding of nearby objects, achieving up to +9.3% absolute improvement in certain tasks. In other categories, BeLLA performs competitively, demonstrating the capability of handling a diverse range of questions.
format Preprint
id arxiv_https___arxiv_org_abs_2512_06096
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle BeLLA: End-to-End Birds Eye View Large Language Assistant for Autonomous Driving
Mohan, Karthik
Singh, Sonam
Kale, Amit Arvind
Computer Vision and Pattern Recognition
The rapid development of Vision-Language models (VLMs) and Multimodal Language Models (MLLMs) in autonomous driving research has significantly reshaped the landscape by enabling richer scene understanding, context-aware reasoning, and more interpretable decision-making. However, a lot of existing work often relies on either single-view encoders that fail to exploit the spatial structure of multi-camera systems or operate on aggregated multi-view features, which lack a unified spatial representation, making it more challenging to reason about ego-centric directions, object relations, and the wider context. We thus present BeLLA, an end-to-end architecture that connects unified 360° BEV representations with a large language model for question answering in autonomous driving. We primarily evaluate our work using two benchmarks - NuScenes-QA and DriveLM, where BeLLA consistently outperforms existing approaches on questions that require greater spatial reasoning, such as those involving relative object positioning and behavioral understanding of nearby objects, achieving up to +9.3% absolute improvement in certain tasks. In other categories, BeLLA performs competitively, demonstrating the capability of handling a diverse range of questions.
title BeLLA: End-to-End Birds Eye View Large Language Assistant for Autonomous Driving
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.06096