SSL-NBV: A Self-Supervised-Learning-Based Next-Best-View algorithm for Efficient 3D Plant Reconstruction by a Robot
Jianchao Ci, Eldert J. van Henten, Xin Wang, Akshay K. Burusa, Gert, Kootstra

TL;DR
This paper introduces SSL-NBV, a self-supervised learning approach for efficient 3D plant reconstruction that enables online adaptation and reduces the need for extensive training data, outperforming traditional methods in speed and data efficiency.
Contribution
The paper presents a novel self-supervised NBV method that learns online during task execution, eliminating the need for ground-truth data and enabling adaptation to new environments.
Findings
SSL-NBV requires fewer views for accurate reconstruction.
It is over 800 times faster than voxel-based methods.
Reduces training annotations by over 90%."],
Abstract
The 3D reconstruction of plants is challenging due to their complex shape causing many occlusions. Next-Best-View (NBV) methods address this by iteratively selecting new viewpoints to maximize information gain (IG). Deep-learning-based NBV (DL-NBV) methods demonstrate higher computational efficiency over classic voxel-based NBV approaches but current methods require extensive training using ground-truth plant models, making them impractical for real-world plants. These methods, moreover, rely on offline training with pre-collected data, limiting adaptability in changing agricultural environments. This paper proposes a self-supervised learning-based NBV method (SSL-NBV) that uses a deep neural network to predict the IG for candidate viewpoints. The method allows the robot to gather its own training data during task execution by comparing new 3D sensor data to the earlier gathered data…
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Taxonomy
TopicsSmart Agriculture and AI · Evolutionary Algorithms and Applications
MethodsExperience Replay
