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A Learning-Based Approach for Perceptual Models of Preference

机译:基于学习的偏好感知模型方法

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This paper introduces a novel data-driven approach based on subjective constraints and feature learning for training perceptual models of preference. Fuzzy evaluation is applied to describe the subjective opinions from a large set of data collected from user study. Combined with the objective attributes of the training models and the subjective preferences, an optimization method is developed successfully for training and learning perceptual models. Two applications are given in details for the selection of 'best' viewpoint of 3D objects and the optimized direction of 3D printing, which verify the effectiveness of our approach. This work also demonstrate a good human-computer interaction practice that draws supporting knowledge from both the machine side and the human side.
机译:本文介绍了一种基于主观约束和特征学习的新型数据驱动方法,用于训练偏好感知模型。模糊评估用于描述来自用户研究的大量数据中的主观意见。结合训练模型的客观属性和主观偏好,成功开发了一种训练和学习感知模型的优化方法。给出了两个应用的详细信息,以选择3D对象的“最佳”视点和3D打印的最佳方向,这证明了我们方法的有效性。这项工作还展示了良好的人机交互实践,它从机器方面和人方面都汲取了支持知识。

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