CVAIApr 4

InCaRPose: In-Cabin Relative Camera Pose Estimation Model and Dataset

arXiv:2604.0381410.0h-index: 3Has Code
Predicted impact top 81% in CV · last 90 daysOriginality Incremental advance
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This work addresses the need for robust extrinsic calibration in safety-critical in-cabin automotive monitoring, where traditional methods fail due to high distortion and constrained spaces.

InCaRPose introduces a Transformer-based architecture for relative camera pose estimation in constrained in-cabin automotive environments, achieving absolute metric-scale translation in a single inference step and generalizing from synthetic to real data. It achieves competitive performance on the 7-Scenes dataset and enables real-time driver monitoring.

Camera extrinsic calibration is a fundamental task in computer vision. However, precise relative pose estimation in constrained, highly distorted environments, such as in-cabin automotive monitoring (ICAM), remains challenging. We present InCaRPose, a Transformer-based architecture designed for robust relative pose prediction between image pairs, which can be used for camera extrinsic calibration. By leveraging frozen backbone features such as DINOv3 and a Transformer-based decoder, our model effectively captures the geometric relationship between a reference and a target view. Unlike traditional methods, our approach achieves absolute metric-scale translation within the physically plausible adjustment range of in-cabin camera mounts in a single inference step, which is critical for ICAM, where accurate real-world distances are required for safety-relevant perception. We specifically address the challenges of highly distorted fisheye cameras in automotive interiors by training exclusively on synthetic data. Our model is capable of generalization to real-world cabin environments without relying on the exact same camera intrinsics and additionally achieves competitive performance on the public 7-Scenes dataset. Despite having limited training data, InCaRPose maintains high precision in both rotation and translation, even with a ViT-Small backbone. This enables real-time performance for time-critical inference, such as driver monitoring in supervised autonomous driving. We release our real-world In-Cabin-Pose test dataset consisting of highly distorted vehicle-interior images and our code at https://github.com/felixstillger/InCaRPose.

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