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Grasp Planning with CNN for Log-Loading Forestry Machine

Elie Ayoub, Patrick Levesque, Inna Sharf

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Abstract

Log loading constitutes a key operation in timber harvesting, and despite the recent spike of interest in introduc- ing automation to the forestry sector, efficient and intelligent grasping of logs remains unresolved. This paper presents a grasp planning pipeline that relies on the identification of logs’ characteristics and pose in the environment of a log-loading machine, to generate high quality grasps. The proposed pipeline involves replicating identified logs in a virtual environment where grasp planning is carried out by using a convolutional neural network and a virtual depth camera. The network relies solely on depth information and the virtual camera can be positioned at a strategically selected location or to follow a certain trajectory to enhance exposure of the logs, all this without having to move the log-loader’s crane. The grasp planning pipeline is evaluated through simulated grasping trials and experiments on a large-scale log-loading test-bed with several configurations of wood logs ranging from a single to multiple logs. The grasp planning pipeline proved to be successful with a grasping rate of 98.33% in the simulated trials and 96.67% in the experimental trials. The grasp planner was able to overcome log characterization and localization uncertainties, thus allowing the log-loader to pick individual logs, and multiple logs at once when possible.

Index terms

Robotics and Automation in Agriculture and Forestry Deep Learning in Grasping and Manipulation Computer Vision for Automation