IMRL: Integrating Visual, Physical, Temporal, and Geometric Representations for Enhanced Food Acquisition
Rui Liu, Zahiruddin Mahammad, Amisha Bhaskar, Pratap Tokekar

TL;DR
This paper introduces IMRL, a novel multi-dimensional representation learning approach that integrates visual, physical, temporal, and geometric data to improve robotic food acquisition, especially in unseen scenarios.
Contribution
IMRL is the first method to combine multiple data representations for robust, adaptable food acquisition in robotics, outperforming existing approaches.
Findings
Achieves up to 35% higher success rate over baselines.
Demonstrates robustness and zero-shot generalization in real robot experiments.
Effectively models food properties and acquisition dynamics.
Abstract
Robotic assistive feeding holds significant promise for improving the quality of life for individuals with eating disabilities. However, acquiring diverse food items under varying conditions and generalizing to unseen food presents unique challenges. Existing methods that rely on surface-level geometric information (e.g., bounding box and pose) derived from visual cues (e.g., color, shape, and texture) often lacks adaptability and robustness, especially when foods share similar physical properties but differ in visual appearance. We employ imitation learning (IL) to learn a policy for food acquisition. Existing methods employ IL or Reinforcement Learning (RL) to learn a policy based on off-the-shelf image encoders such as ResNet-50. However, such representations are not robust and struggle to generalize across diverse acquisition scenarios. To address these limitations, we propose a…
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Taxonomy
TopicsColor perception and design · Sensory Analysis and Statistical Methods · Nutritional Studies and Diet
