Search Results for author: Ziyuan Liu

Found 16 papers, 3 papers with code

Implicit Learning of Scene Geometry from Poses for Global Localization

no code implementations4 Dec 2023 Mohammad Altillawi, Shile Li, Sai Manoj Prakhya, Ziyuan Liu, Joan Serrat

In this paper, we propose to utilize these minimal available labels (. i. e, poses) to learn the underlying 3D geometry of the scene and use the geometry to estimate the 6 DoF camera pose.

Visual Localization

Domain Randomization-Enhanced Depth Simulation and Restoration for Perceiving and Grasping Specular and Transparent Objects

1 code implementation7 Aug 2022 Qiyu Dai, Jiyao Zhang, Qiwei Li, Tianhao Wu, Hao Dong, Ziyuan Liu, Ping Tan, He Wang

Commercial depth sensors usually generate noisy and missing depths, especially on specular and transparent objects, which poses critical issues to downstream depth or point cloud-based tasks.

Pose Estimation Transparent objects

Unseen Object 6D Pose Estimation: A Benchmark and Baselines

no code implementations23 Jun 2022 Minghao Gou, Haolin Pan, Hao-Shu Fang, Ziyuan Liu, Cewu Lu, Ping Tan

In this paper, we propose a new task that enables and facilitates algorithms to estimate the 6D pose estimation of novel objects during testing.

6D Pose Estimation

A Real World Dataset for Multi-view 3D Reconstruction

no code implementations22 Mar 2022 Rakesh Shrestha, Siqi Hu, Minghao Gou, Ziyuan Liu, Ping Tan

We present a dataset of 998 3D models of everyday tabletop objects along with their 847, 000 real world RGB and depth images.

3D Reconstruction Multi-View 3D Reconstruction +3

Online Semantic Exploration of Indoor Maps

no code implementations21 Feb 2020 Ziyuan Liu, Dong Chen, Georg von Wichert

In this paper we propose a method to extract an abstracted floor plan from typical grid maps using Bayesian reasoning.

Applying Rule-Based Context Knowledge to Build Abstract Semantic Maps of Indoor Environments

no code implementations21 Feb 2020 Ziyuan Liu, Georg von Wichert

In this paper, we propose a generalizable method that systematically combines data driven MCMC samplingand inference using rule-based context knowledge for data abstraction.

Descriptive

A Generalizable Knowledge Framework for Semantic Indoor Mapping Based on Markov Logic Networks and Data Driven MCMC

no code implementations19 Feb 2020 Ziyuan Liu, Georg von Wichert

In this paper, we propose a generalizable knowledge framework for data abstraction, i. e. finding compact abstract model for input data using predefined abstract terms.

Descriptive

Table-Top Scene Analysis Using Knowledge-Supervised MCMC

no code implementations19 Feb 2020 Ziyuan Liu, Dong Chen, Kai M. Wurm, Georg von Wichert

Our approach to generate scene graphs is probabilistic: Uncertainty in the object poses is addressed by a probabilistic sensor model that is embedded in a data driven MCMC process.

Descriptive Object

Extracting Semantic Indoor Maps from Occupancy Grids

no code implementations19 Feb 2020 Ziyuan Liu, Georg von Wichert

The primary challenge for any autonomous system operating in realistic, rather unconstrained scenarios is to manage the complexity and uncertainty of the real world.

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