MotioNet

Author:

Shi Mingyi1,Aberman Kfir2,Aristidou Andreas3,Komura Taku4,Lischinski Dani5,Cohen-Or Daniel6,Chen Baoquan7

Affiliation:

1. Shandong University, China, and AICFVE, Beijing Film Academy, China

2. AICFVE, Beijing Film Academy, China, and Tel-Aviv University, Israel

3. University of Cyprus and RISE Research Centre, Cyprus

4. Edinburgh University, Japan

5. Shandong University, China and The Hebrew University of Jerusalem, Israel and AICFVE, Beijing Film Academy, Israel

6. Tel-Aviv University, Israel, and AICFVE, Beijing Film Academy, Israel

7. CFCS, Peking University, China, and AICFVE, Beijing Film Academy, China

Abstract

We introduce MotioNet , a deep neural network that directly reconstructs the motion of a 3D human skeleton from a monocular video. While previous methods rely on either rigging or inverse kinematics (IK) to associate a consistent skeleton with temporally coherent joint rotations, our method is the first data-driven approach that directly outputs a kinematic skeleton, which is a complete, commonly used motion representation. At the crux of our approach lies a deep neural network with embedded kinematic priors, which decomposes sequences of 2D joint positions into two separate attributes: a single, symmetric skeleton encoded by bone lengths, and a sequence of 3D joint rotations associated with global root positions and foot contact labels. These attributes are fed into an integrated forward kinematics (FK) layer that outputs 3D positions, which are compared to a ground truth. In addition, an adversarial loss is applied to the velocities of the recovered rotations to ensure that they lie on the manifold of natural joint rotations. The key advantage of our approach is that it learns to infer natural joint rotations directly from the training data rather than assuming an underlying model, or inferring them from joint positions using a data-agnostic IK solver. We show that enforcing a single consistent skeleton along with temporally coherent joint rotations constrains the solution space, leading to a more robust handling of self-occlusions and depth ambiguities.

Funder

Israel Science Foundation

European Union’s Horizon 2020 Research and Innovation Programme

National Key R8D Program of China

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

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