2025 年 145 巻 9 号 p. 787-794
In this study, an ortho image was generated from the 3D point cloud data of cherry tomatoes, and fruit regions were extracted using SegNet, a deep learning based semantic segmentation model. From the extracted fruit regions, a reconstructed 3D point cloud of each fruit was generated, and the occluded regions were complemented based on the fruit's geometric symmetry. The fruit volume was then estimated using the least-squares ellipsoidal approximation.
When the fruit was not occluded by leaves, the estimation error was within ±1 ml, demonstrating the effectiveness of the proposed method. In contrast, when the fruit was partially occluded by leaves, the error increased significantly to 18.66±14.33 ml, due to incomplete reconstruction and poor shape fitting with an ellipsoid. To address this issue, a novel method was introduced to estimate the fruit's center and symmetrically complement occluded regions. As a result, the accuracy of the volume estimation improved substantially, reducing the error to 1.73±3.91 ml.
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