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首页> 外文期刊>Optics and Lasers in Engineering >Accurate and rapid alignment of laser scanned 3D surface using TSK-type neural-fuzzy network-based coarse-to-fine strategy
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Accurate and rapid alignment of laser scanned 3D surface using TSK-type neural-fuzzy network-based coarse-to-fine strategy

机译:使用基于TSK型神经模糊网络的从粗到精策略对激光扫描3D表面进行精确且快速的对准

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摘要

Aligning a laser scanned three-dimensional (3D) surface is considered a critical step in object recognition, shape analysis, and automatic visual inspection. Two major concerns for the alignment task are execution time and alignment accuracy. Recently, neural network-based methods have become very popular due to their high efficiency. However, such methods experience difficulty in reaching high accuracy because the use of principal component analysis (PCA) to perform coarse alignment causes a large alignment error. Thus, a TSK-type neural-fuzzy network (TNFN)-based coarse-to-fine 3D surface alignment scheme is proposed in the current paper. Compared with traditional neural network-based approaches, the proposed method provides a coarse-to-fine alignment approach to ensure the accurate pose estimated by TNFN in the coarse phase, as well the high alignment speed provided by TNFN-based surface modeling in the fine phase. Experimental results demonstrate the superior performance of the proposed 3D surface alignment system over existing systems.
机译:对齐激光扫描的三维(3D)表面被认为是对象识别,形状分析和自动外观检查中的关键步骤。对齐任务的两个主要问题是执行时间和对齐精度。近来,基于神经网络的方法由于其高效率而变得非常流行。然而,由于使用主成分分析(PCA)进行粗略对准会导致较大的对准误差,因此这些方法难以达到高精度。因此,本文提出了一种基于TSK型神经模糊网络(TNFN)的从粗到精3D表面对齐方案。与传统的基于神经网络的方法相比,该方法提供了一种从粗到精的对齐方法,以确保由TNFN估算出的粗姿态的精确姿态,以及由基于TNFN的表面建模提供的高对齐速度。相。实验结果证明了所提出的3D表面对齐系统优于现有系统的性能。

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