Making robots do cool things at Logos Lab, Arizona State University
Hey! I am a second year PhD student at Arizona State University working at the Logos Lab advised by Dr. Nakul Gopalan. My research focuses on developing robots that can reason about the world by learning generalizable models.
I received my Bachelor’s degree in Electronics and Communication Engineering from NIT Bhopal, India, in 2021, and my Master’s degree in Computer Engineering from Arizona State University in 2022. Before starting my MS, I worked as a software engineer at e2Serv Technologies in India.
Outside the lab, I enjoy reading and playing video games. I’m a big fan of high fantasy and sci-fi novels, and I especially enjoy open-world games and RPGs.
Articulation modeling enables robots to learn joint parameters of articulated objects for effective manipulation which can then be used downstream for skill learning or planning. Existing approaches often rely on prior knowledge about the objects, such as the number or type of joints. Some of these approaches also fail to recover occluded joints that are only revealed during interaction. Others require large numbers of multi-view images for every object, which is impractical in real-world settings. Furthermore, prior works neglect the order of manipulations, which is essential for many multi-DoF objects where one joint must be operated before another, such as a dishwasher. We introduce PokeNet, an end-to-end framework that estimates articulation models from a single human demonstration without prior object knowledge. Given a sequence of point cloud observations of a human manipulating an unknown object, PokeNet predicts joint parameters, infers manipulation order, and tracks joint states over time. PokeNet outperforms existing state-of-the-art methods, improving joint axis and state estimation accuracy by an average of over 27% across diverse objects, including novel and unseen categories. We demonstrate these gains in both simulation and real-world environments.
@inproceedings{gupta2026pokenet,title={PokeNet: Learning Kinematic Models of Articulated Objects from Human Observations},author={Gupta, Anmol and Gu, Weiwei and Patil, Omkar and Lee, Jun Ki and Gopalan, Nakul},booktitle={2026 IEEE International Conference on Robotics and Automation (ICRA)},year={2026},url={https://arxiv.org/abs/2602.02741},}
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