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An End-to-End Task-Simplified and Anchor-Guided Deep Learning Framework for Image-Based Head Pose Estimation

机译:用于基于图像的头部姿势估计的端到端任务简化和锚定引导的深度学习框架

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Image-based Head Pose Estimation (HPE) from an arbitrary view is still challenging due to the complex imaging conditions as well as the intrinsic and extrinsic property of the faces. Different from existing HPE methods combining additional cues or tasks, this paper solves the HPE problem by relieving problem complexity. Our method integrates the deep Task-Simplification oriented Image Regularization (TSIR) module with the Anchor-Guided Pose Estimation (AGPE) module, and formulate the HPE problem into a unified end-to-end learning framework. In this paper, we define anchors as images that strictly obey the & x201C;gravity rule in camera & x201D;, which follows the assumption that camera coordinate of the vertical axis should always be consistent with that of the local head coordinate. We formulate image pair as the regularized image produced by TSIR along with its anchor counterpart, both of which are fed into the AGPE module for estimating fine-grained head poses. This paper also proposes an Anchor-Guided Pairwise Loss (AGPL), which describes the interdependent relevance of poses between each pair of images. The proposed method is evaluated and validated with sufficient experiments which show its effectiveness. Comprehensive experiments show that our approach outperforms the state-of-the-art image-based methods on both indoor and outdoor datasets.
机译:由于复杂的成像条件以及面孔的内在和外在性,从任意视图的基于图像的头部姿势估计(HPE)仍然挑战。不同于现有的HPE方法,结合了额外的提示或任务,通过缓解问题复杂性来解决HPE问题。我们的方法将深度任务简化的定向图像正规化(TSIR)模块与锚引导的姿势估计(AGPE)模块集成在一起,并将HPE问题与统一的端到端学习框架制定。在本文中,我们将锚定定义为严格遵守和x201c的图像;相机和x201d中的重力规则;这遵循垂直轴的相机坐标应该始终与本地头部坐标的相机坐标一致。我们将图像对作为由TSIR产生的正则图像与其锚固件相同,这两者都被馈送到AGPE模块中,以估计细粒度头部姿势。本文还提出了一种锚定引导的成对损耗(AGPL),其描述了每对图像之间的姿势的相互依存相关性。通过足够的实验评估和验证所提出的方法,其表现出其有效性。综合实验表明,我们的方法优于室内和室外数据集的最先进的基于图像的方法。

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