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Few-Shot Adaptation to Non-Stationary Environments via Latent Trend Embedding for Robotics

arXiv:2603.10373v14.749 citationsh-index: 9
Predicted impact top 74% in RO · last 90 daysOriginality Incremental advance
AI Analysis

This provides a scalable and interpretable solution for robotics applications operating across diverse and evolving environments, though it is incremental as it builds on existing adaptation methods.

The paper tackled the problem of concept shift in robotic systems by proposing a latent Trend ID-based framework for few-shot adaptation in non-stationary environments, achieving adaptation without modifying model parameters as demonstrated in a quantitative food grasping task.

Robotic systems operating in real-world environments often suffer from concept shift, where the input-output relationship changes due to latent environmental factors that are not directly observable. Conventional adaptation methods update model parameters, which may cause catastrophic forgetting and incur high computational cost. This paper proposes a latent Trend ID-based framework for few-shot adaptation in non-stationary environments. Instead of modifying model weights, a low-dimensional environmental state, referred to as the Trend ID, is estimated via backpropagation while the model parameters remain fixed. To prevent overfitting caused by per-sample latent variables, we introduce temporal regularization and a state transition model that enforces smooth evolution of the latent space. Experiments on a quantitative food grasping task demonstrate that the learned Trend IDs are distributed across distinct regions of the latent space with temporally consistent trajectories, and that few-shot adaptation to unseen environments is achieved without modifying model parameters. The proposed framework provides a scalable and interpretable solution for robotics applications operating across diverse and evolving environments.

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