基于深度信息的草莓三维重建技术
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国家高技术研究发展计划(863计划)项目(2013AA102406)


3D Reconstruction of Strawberry Based on Depth Information
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    摘要:

    以盆栽和高架两种栽培模式生长环境下的草莓植株为研究对象,提出了一种基于深度信息分割聚类的草莓冠层结构形态三维重建算法。首先,以深度信息的不连续性特征作为草莓植株逐层分割的重要依据,以深度二维图像作为全局参考指标,提出深度信息步进方法,自动提取冠层点云;其次,改进密度聚类算法,有效滤除随机、跳边和背景噪声;最后,改进基于Harris算子的多源图像融合算法,实现彩色图像与强度图像的配准及点云颜色的映射,三维重建出具有颜色信息的草莓冠层结构形态。为验证该算法的有效性,将三维重建后冠层的平均单叶长度及A-B线距离作为评价指标,试验结果表明,模型的平均单叶长度计算正确率为93%左右,A-B线距离计算正确率为97%左右,研究结果可为草莓采摘机器人果实识别过程中枝叶空间结构关系的构建提供技术支持。

    Abstract:

    With the development of 3D acquisition devices, 3D modeling method emerges in endlessly. In recent years, 3D reconstruction based on real data is focused on scanning and TOF imaging method. The main drawback of the former is that needs extensive man-machine interaction. The latter can transform a wide range of scene depth information into plant 3D point cloud data in a short time. Most plant reconstruction method based on TOF technology is center on brance structure, but for herbaceous plant, leaves are not easy to operate. So a 3D model reconstruction algorithm was presented based on depth information segmentation and clustering for potted and elevated strawberry. Firstly, the algorithm took discrete depth information as a significant reference standard for object segmentation while taking the depth-dimensional image as a global reference standard to extract discrete point cloud through depth stepping. Then, the algorithm used clustering algorithm based on density to filter out random noise, jump-edge noise as well as background noise. By applying Harris algorithm between color image and the intensity image, a robust registration result was got and an index relationship between point cloud and pixel points was found. Ultimately, 3D strawberry canopy morphology with full color information was reconstructed after following all those steps. Experimental results showed that the algorithm had achieved good effects on segmentation clustering and coloring for potted and elevated strawberry leaves. The accuracy of single-leaf length was around 93% while A-B line accuracy was close to 97%, which indicated that the reconstructed model accuracy met the requirements of phenotypic parameters extraction. The 3D model can provide a new strategy for picking robot in spatial structure research domain.

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刘刚,张雪,宗泽,郭彩玲.基于深度信息的草莓三维重建技术[J].农业机械学报,2017,48(4):160-165,172. LIU Gang, ZHANG Xue, ZONG Ze, GUO Cailing.3D Reconstruction of Strawberry Based on Depth Information[J]. Transactions of the Chinese Society for Agricultural Machinery,2017,48(4):160-165,172.

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  • 收稿日期:2016-07-26
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  • 在线发布日期: 2017-04-10
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