Saved in:
Bibliographic Details
Main Authors: Jin, Bu, Li, Weize, Yang, Baihan, Zhu, Zhenxin, Jiang, Junpeng, Gao, Huan-ang, Sun, Haiyang, Zhan, Kun, Hu, Hengtong, Zhang, Xueyang, Jia, Peng, Zhao, Hao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.01729
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909694473273344
author Jin, Bu
Li, Weize
Yang, Baihan
Zhu, Zhenxin
Jiang, Junpeng
Gao, Huan-ang
Sun, Haiyang
Zhan, Kun
Hu, Hengtong
Zhang, Xueyang
Jia, Peng
Zhao, Hao
author_facet Jin, Bu
Li, Weize
Yang, Baihan
Zhu, Zhenxin
Jiang, Junpeng
Gao, Huan-ang
Sun, Haiyang
Zhan, Kun
Hu, Hengtong
Zhang, Xueyang
Jia, Peng
Zhao, Hao
contents Recent advancements in autonomous driving (AD) systems have highlighted the potential of world models in achieving robust and generalizable performance across both ordinary and challenging driving conditions. However, a key challenge remains: precise and flexible camera pose control, which is crucial for accurate viewpoint transformation and realistic simulation of scene dynamics. In this paper, we introduce PosePilot, a lightweight yet powerful framework that significantly enhances camera pose controllability in generative world models. Drawing inspiration from self-supervised depth estimation, PosePilot leverages structure-from-motion principles to establish a tight coupling between camera pose and video generation. Specifically, we incorporate self-supervised depth and pose readouts, allowing the model to infer depth and relative camera motion directly from video sequences. These outputs drive pose-aware frame warping, guided by a photometric warping loss that enforces geometric consistency across synthesized frames. To further refine camera pose estimation, we introduce a reverse warping step and a pose regression loss, improving viewpoint precision and adaptability. Extensive experiments on autonomous driving and general-domain video datasets demonstrate that PosePilot significantly enhances structural understanding and motion reasoning in both diffusion-based and auto-regressive world models. By steering camera pose with self-supervised depth, PosePilot sets a new benchmark for pose controllability, enabling physically consistent, reliable viewpoint synthesis in generative world models.
format Preprint
id arxiv_https___arxiv_org_abs_2505_01729
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PosePilot: Steering Camera Pose for Generative World Models with Self-supervised Depth
Jin, Bu
Li, Weize
Yang, Baihan
Zhu, Zhenxin
Jiang, Junpeng
Gao, Huan-ang
Sun, Haiyang
Zhan, Kun
Hu, Hengtong
Zhang, Xueyang
Jia, Peng
Zhao, Hao
Computer Vision and Pattern Recognition
Recent advancements in autonomous driving (AD) systems have highlighted the potential of world models in achieving robust and generalizable performance across both ordinary and challenging driving conditions. However, a key challenge remains: precise and flexible camera pose control, which is crucial for accurate viewpoint transformation and realistic simulation of scene dynamics. In this paper, we introduce PosePilot, a lightweight yet powerful framework that significantly enhances camera pose controllability in generative world models. Drawing inspiration from self-supervised depth estimation, PosePilot leverages structure-from-motion principles to establish a tight coupling between camera pose and video generation. Specifically, we incorporate self-supervised depth and pose readouts, allowing the model to infer depth and relative camera motion directly from video sequences. These outputs drive pose-aware frame warping, guided by a photometric warping loss that enforces geometric consistency across synthesized frames. To further refine camera pose estimation, we introduce a reverse warping step and a pose regression loss, improving viewpoint precision and adaptability. Extensive experiments on autonomous driving and general-domain video datasets demonstrate that PosePilot significantly enhances structural understanding and motion reasoning in both diffusion-based and auto-regressive world models. By steering camera pose with self-supervised depth, PosePilot sets a new benchmark for pose controllability, enabling physically consistent, reliable viewpoint synthesis in generative world models.
title PosePilot: Steering Camera Pose for Generative World Models with Self-supervised Depth
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.01729