In general, my research interests reside in the intersection of robotics and machine learning. A primary focus is on the trustworthy and adaptable learning ability of a robot in an open-world environment. Aiming to equip an autonomous agent with introspective capabilities i.e., uncertainty quantification/awareness of system internal states, I am passionate about investigating probabilistic machine learning on how to properly model/quantify it and leverage such information for learning-enabled robotics.
P.S. The pronunciation of my first name "Jianxiang" is quite close to "Jensen" (yep, the well-known "Jensen inequality" often used in the Evidence Lower Bound (ELBO) derivation) but with a different ending :P.
Jianxiang Feng received his PhD in robotics and machine learning from Technical University of Munich (TUM) and the Institute of Robotics and Mechatronics (RM), the German Aerospace Center (DLR) in 2024. Before he obtained his M.Sc in Electrical Engineering and Information Technology from TUM, 2019 and B.Sc in Electronic Engineering from Beijing University of Posts and Telecommunication (BUPT), 2015. His research interests reside in the intersection of robotics and machine learning.
One paper (LensDFF) accepted for IROS 2025 and another one (FFHFlow) for CoRL 2025.
07.2025
I gave an invited talk at the frontier technology forum organized by the institute of Artificial Intelligence, China Telecom (TeleAI) at World AI Conference, Shanghai.
A flow-based variational framework that generates diverse, robust multi-finger grasps while explicitly quantifying perceptual uncertainty in partial point clouds and itself.
An efficient way to distill view-consistent 2D features onto 3D points based on the proposed language-enhanced feature fusion strategy, thereby enabling single-view few-shot generalization.
A highly integrated assistive robot EDAN, operated by an interface based on bioelectrical signals, combined with shared control and a whole-body coordination of the entire system, through a case study involving people with motor impairments to accomplish real-world activities..
A language-guided object-centric diffusion policy that takes a 3d representation of task-relevant objects as conditional input and can be guided by cost function for collision avoidance at inference time.
A Conditional Generative Adversarial Networks (cGANs)-based DexGenerator to generate dexterous grasps and a discriminator-like DexEvalautor to assess the stability of these grasps.
A dynamic grasping framework for unknown objects in this work, which uses a five-fingered hand with visual servo control and can compensate for external disturbances.
A novel teleoperation system for advancing aerial manipulation in dynamic and unstructured environments based on pose estimation pipelines for the industrial objects of
both known and unknown geometries and an active learning pipeline.
A holistic graphical approach including a graph representation for product assemblies and a policy architecture, Graph Assembly Processing Network, dubbed GRACE to predict assembly sequences in a step-by-step manner.
A comprehensive overview of uncertainty estimation in neural networks, reviewing recent advances in the field, highlighting current challenges, and identifying potential research opportunities.
A probabilistic framework to obtain both reliable and fast uncertainty estimates for predictions with Deep Neural Networks (DNNs) based on Sparse Gaussian Processes.
A sparse representation of model uncertainty for Deep Neural Networks (DNNs) where the parameter posterior is approximated with an inverse formulation of the Multivariate Normal Distribution (MND), also known as the information form.
A method for adaptive image classification based on fusing uncertainty estimates from Bayesian Neural Networks as unary potentials within a Conditional Random Field (CRF).
Academic Services
Conference/Journal Reviewer:
International Conference on Learning Representations (ICLR) 2025
Conference on Robot Learning (CoRL) 2022-2025
IEEE International Conference on Robotics and Automation (ICRA) 2020&2022&2025
IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) 2020&2022&2025
European Conference on Artificial Intelligence (ECAI) 2020
IEEE-RAS International Conference on Humanoid Robots 2024
IEEE Transactions on Circuits and Systems for Video Technology (TCSVT)
Team player, the 1st place in the discipline assist robot race of Cybathlon Challenge as part of EDAN team (press, video)
06.2022
Team player, EDAN demo at Automatica Exhibition 2022 (press).
Mentorship
08.2023
Master Thesis Supervision at TUM: "Improving Sample Selection in Active Learning Using Graph Neural Networks" by Zhoumin Zhao, co-supervision with Simon Geisler.
06.2023
Research Internship at DLR: "Automating Scene Graph Data Generation for Task and Motion Planning via Blenderproc" by Juan Diego Plaza Gomez, co-supervision with Samuel Bustamante and Dominik Winkelbauer.
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