VirtualButcher:基于噪声点云重构的切割线粗到精的标注转换

R. Falque, Teresa Vidal-Calleja, M. McPhee, E. Toohey, A. Alempijevic
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引用次数: 0

摘要

机器人和自动化正在迅速成为肉类加工业务的一部分。目前将胴体分解成原始动物的自动化依赖于x射线的引导,与机器带锯相互连接。在产生非常精确的切割线的同时,使用视觉系统进行引导将更加经济实惠。本文提出了一种新的方法,解决了在CT采集的典型模型上标注的三维无噪声切割线与RGB-D相机采集的点云形式的噪声目标之间的注释传输问题。该方法首先使用非刚性变形算法对每个体的姿态进行对齐,然后进行局部搜索以解决表面对应关系,然后用于非刚性变形模板。我们通过在公共可用的人体姿势数据集上使用多种最先进的算法进行基准测试,定量评估了该方法。我们还提出了对羔羊尸体的概念验证评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VirtualButcher: Coarse-to-fine Annotation Transfer of Cutting Lines on Noisy Point Cloud Reconstruction
Robotics and automation are rapidly becoming part of meat processing operations. Current automation of breaking down a carcass into primals relies on guidance from X-ray, inter-connected with robotised band-saws. While yielding very accurate cutting lines, the use of vision systems for guidance would be significantly more affordable. This work proposes a novel method that solves the annotation transfer between a 3D noise-free cut-ting line annotated on a CT acquired canonical model and a noisy target in the form of a point cloud acquired by RGB-D cameras. The proposed coarse-to-fine method initially aligns the posture of each body using a non-rigid deformation algorithm and then performs a local search to solve the surface correspondence which is later used to morph the template non-rigidly. We quantitatively assess the approach by benchmarking with multiple state-of-the-art algorithms on a public available human pose dataset. We also present a proof of concept evaluation on lamb carcasses.
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