Search Results for author: Jinwook Huh

Found 6 papers, 1 papers with code

HIO-SDF: Hierarchical Incremental Online Signed Distance Fields

no code implementations14 Oct 2023 Vasileios Vasilopoulos, Suveer Garg, Jinwook Huh, Bhoram Lee, Volkan Isler

HIO-SDF combines the advantages of these representations using a hierarchical approach which employs a coarse voxel grid that captures the observed parts of the environment together with high-resolution local information to train a neural network.

Real-time Simultaneous Multi-Object 3D Shape Reconstruction, 6DoF Pose Estimation and Dense Grasp Prediction

1 code implementation16 May 2023 Shubham Agrawal, Nikhil Chavan-Dafle, Isaac Kasahara, Selim Engin, Jinwook Huh, Volkan Isler

In this paper, we present a novel method to provide this geometric and semantic information of all objects in the scene as well as feasible grasps on those objects simultaneously.

3D Shape Reconstruction Object +1

Self-supervised Wide Baseline Visual Servoing via 3D Equivariance

no code implementations12 Sep 2022 Jinwook Huh, Jungseok Hong, Suveer Garg, Hyun Soo Park, Volkan Isler

Existing approaches that regress absolute camera pose with respect to an object require 3D ground truth data of the object in the forms of 3D bounding boxes or meshes.

Object

Learning Continuous Cost-to-Go Functions for Non-holonomic Systems

no code implementations20 Mar 2021 Jinwook Huh, Daniel D. Lee, Volkan Isler

In this work, we show that uniform sampling fails for non-holonomic systems.

Cost-to-Go Function Generating Networks for High Dimensional Motion Planning

no code implementations10 Dec 2020 Jinwook Huh, Volkan Isler, Daniel D. Lee

The c2g-HOF architecture consists of a cost-to-go function over the configuration space represented as a neural network (c2g-network) as well as a Higher Order Function (HOF) network which outputs the weights of the c2g-network for a given input workspace.

Motion Planning Vocal Bursts Intensity Prediction

Probabilistically Safe Corridors to Guide Sampling-Based Motion Planning

no code implementations1 Jan 2019 Jinwook Huh, Omur Arslan, Daniel D. Lee

In this paper, we introduce a new probabilistically safe local steering primitive for sampling-based motion planning in complex high-dimensional configuration spaces.

Robotics

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