Imitation Learning from a Single Demonstration Leveraging Vector Quantization for Robotic Harvesting

Author:

Porichis Antonios12,Inglezou Myrto1ORCID,Kegkeroglou Nikolaos3ORCID,Mohan Vishwanathan1,Chatzakos Panagiotis1

Affiliation:

1. AI Innovation Centre, University of Essex, Wivenhoe Park, Colchester CO4 3SQ, UK

2. National Structural Integrity Research Centre, Granta Park, Great Abington, Cambridge CB21 6AL, UK

3. TWI-Hellas, 280 Kifisias Ave., 152 32 Halandri, Greece

Abstract

The ability of robots to tackle complex non-repetitive tasks will be key in bringing a new level of automation in agricultural applications still involving labor-intensive, menial, and physically demanding activities due to high cognitive requirements. Harvesting is one such example as it requires a combination of motions which can generally be broken down into a visual servoing and a manipulation phase, with the latter often being straightforward to pre-program. In this work, we focus on the task of fresh mushroom harvesting which is still conducted manually by human pickers due to its high complexity. A key challenge is to enable harvesting with low-cost hardware and mechanical systems, such as soft grippers which present additional challenges compared to their rigid counterparts. We devise an Imitation Learning model pipeline utilizing Vector Quantization to learn quantized embeddings directly from visual inputs. We test this approach in a realistic environment designed based on recordings of human experts harvesting real mushrooms. Our models can control a cartesian robot with a soft, pneumatically actuated gripper to successfully replicate the mushroom outrooting sequence. We achieve 100% success in picking mushrooms among distractors with less than 20 min of data collection comprising a single expert demonstration and auxiliary, non-expert, trajectories. The entire model pipeline requires less than 40 min of training on a single A4000 GPU and approx. 20 ms for inference on a standard laptop GPU.

Funder

EU’s Horizon 2020 research and innovation program

Publisher

MDPI AG

Reference40 articles.

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3. Picking dynamic analysis for robotic harvesting of Agaricus bisporus mushrooms;Huang;Comput. Electron. Agric.,2021

4. Supplementation in Mushroom Crops and Its Impact on Yield and Quality;Carrasco;AMB Express,2018

5. Modeling and Force Analysis of a Harvesting Robot for Button Mushrooms;Yang;IEEE Access,2022

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