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Tech & AI 4.0

Robots Learn to Grab Multiple Logs Using AI and Virtual Vision

Researchers developed a machine learning system that enables robotic harvesters to grasp multiple logs simultaneously in forest operations—a major bottleneck in automating forestry. By using simulated 3D camera feeds rather than real cameras, the approach reduces computational demands and accelerates training, making large-scale deployment more economically viable for timber companies.

Originaltitel: Multi-log grasping using reinforcement learning and virtual visual servoing

Abstrakt

<p>We explore multi-log grasping using reinforcement learning and virtual visual servoing for automated forwarding in a simulated environment. Automation of forest processes is a major challenge, and many techniques regarding robot control pose different challenges due to the unstructured and harsh outdoor environment. Grasping multiple logs involves various problems of dynamics and path planning, where understanding the interaction between the grapple, logs, terrain, and obstacles requires visual information. To address these challenges, we separate image segmentation from crane control and utilise a virtual camera to provide an image stream from reconstructed 3D data. We use Cartesian control to simplify domain transfer to real-world applications. Because log piles are static, visual servoing using a 3D reconstruction of the pile and its surroundings is equivalent to using real camera data until the point of grasping. This relaxes the limits on computational resources and time for the challenge of image segmentation, and allows for data collection in situations where the log piles are not occluded. The disadvantage is the lack of information during grasping. We demonstrate that this problem is manageable and present an agent that is 95% successful in picking one or several logs from challenging piles of 2–5 logs.</p>

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