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A VARIATIONAL APPROACH TO MULTI-SENSOR FUSION OF IMAGES

机译:多传感器图像融合的一种变通方法

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摘要

Past research into multi-modality sensor data fusion has given rise to approaches that are generally heuristic and ad hoc. In this paper we utilize the calculus of variations as the underlying framework for fusing registered images of different modalities when models relating these modalities are available. The result is a mathematically rigorous method for improving the accuracy with which parameters can be estimated. Using both dense and sparse simulated range and intensity data, the proposed approach is demonstrated on the problem of estimating the surface representing the three dimensional structure of a scene. The results indicate that a four to five-fold increase in surface estimation accuracy with respect to the original input data can be realized. Furthermore, an 8%-250% increase in accuracy over surface estimation from each sensing modality alone (i.e., via shape from shading or surface reconstruction) can be realized. [References: 75]
机译:过去对多模式传感器数据融合的研究已经产生了通常是启发式和临时性的方法。在本文中,当与这些模态相关的模型可用时,我们将变异演算作为融合不同模态的注册图像的基础框架。结果是一种数学上严格的方法,用于提高估计参数的准确性。使用密集和稀疏的模拟范围和强度数据,在估计代表场景三维结构的表面的问题上证明了该方法。结果表明,相对于原始输入数据,表面估计精度可提高四到五倍。此外,可以实现相对于仅根据每个感测模态(即,通过阴影或表面重构的形状)的表面估计的精度提高了8%-250%。 [参考:75]

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