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Analysis

This paper addresses the challenge of state ambiguity in robot manipulation, a common problem where identical observations can lead to multiple valid behaviors. The proposed solution, PAM (Policy with Adaptive working Memory), offers a novel approach to handle long history windows without the computational burden and overfitting issues of naive methods. The two-stage training and the use of hierarchical feature extraction, context routing, and a reconstruction objective are key innovations. The paper's focus on maintaining high inference speed (above 20Hz) is crucial for real-world robotic applications. The evaluation across seven tasks demonstrates the effectiveness of PAM in handling state ambiguity.
Reference

PAM supports a 300-frame history window while maintaining high inference speed (above 20Hz).

Research#robotics🔬 ResearchAnalyzed: Jan 10, 2026 12:49

Visuomotor Policy Learning: Diffusion Bridge & Stochastic Differential Equations

Published:Dec 8, 2025 06:47
1 min read
ArXiv

Analysis

This ArXiv paper explores a novel approach to visuomotor policy learning using diffusion models and stochastic differential equations. The research potentially enhances robot control by bridging visual observations with motor actions more effectively.
Reference

The paper uses diffusion models and stochastic differential equations.

Research#Robotics📝 BlogAnalyzed: Dec 29, 2025 08:40

Robotic Perception and Control with Chelsea Finn - TWiML Talk #29

Published:Jun 23, 2017 19:25
1 min read
Practical AI

Analysis

This article summarizes a podcast episode featuring Chelsea Finn, a PhD student at UC Berkeley, discussing her research on machine learning for robotic perception and control. The conversation delves into technical aspects of her work, including Deep Visual Foresight, Model-Agnostic Meta-Learning, and Visuomotor Learning, as well as zero-shot, one-shot, and few-shot learning. The host also mentions a listener's request for an interview with a current PhD student and discusses advice for students and independent learners. The episode is described as highly technical, warranting a "Nerd Alert."
Reference

Chelsea’s research is focused on machine learning for robotic perception and control.