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Quick2Insight: A user-friendly framework for interactive rendering of biological image volumes

机译:Quick2Insight:用于生物图像卷的交互式渲染的用户友好框架

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This paper presents a new framework for simple, interactive volume exploration of biological datasets. We accomplish this by automatically creating dataset-specific transfer functions and utilizing them during direct volume rendering. The proposed method employs a K-Means++ clustering algorithm to classify a two-dimensional histogram created from the input volume. The classification process utilizes spatial and data properties from the volume. Then using properties derived from the classified clusters, our method automatically generates color and opacity transfer functions and presents the user with a high quality initial rendering of the volume data. Our method estimates classification parameters automatically, yet users are also allowed to input or override parameters to utilize pre-existing knowledge of their input data. User input is incorporated through the simple yet intuitive interface for transfer function manipulation included in our framework. Our new interface helps users focus on feature space exploration instead of the usual effort intensive, low-level widget manipulation. We evaluated the framework using three-dimensional medical and biological images. Our preliminary results demonstrate the effectiveness of our method of automating transfer function generation for high quality initial visualization. The proposed approach effectively generates automatic transfer functions and enables users to explore and interact with their data in an intuitive way, without requiring detailed knowledge of computer graphics or rendering techniques. Funded by NCI Contract No. HHSN261200800001E.
机译:本文为生物数据集的简单,交互式勘探提供了新的框架。我们通过在直接卷渲染期间自动创建特定于数据集特定的传输函数并利用它们来实现此目的。所提出的方法采用K-Means ++聚类算法来对从输入卷创建的二维直方图进行分类。分类过程利用来自卷的空间和数据属性。然后使用从分类群集派生的属性,我们的方法自动生成颜色和不透明度传输函数,并向用户展示具有卷数据的高质量初始渲染。我们的方法自动估计分类参数,但也允许用户输入或覆盖参数以利用其输入数据的预先存在知识。用户输入通过简单而直观的接口整合到我们的框架中包含的传输功能操作。我们的新界面可帮助用户专注于功能空间探索,而不是通常的努力密集型低级小部件操作。我们使用三维医学和生物图像评估了该框架。我们的初步结果表明了我们自动化传递函数生成方法的有效性,以获得高质量的初始可视化。所提出的方法有效地生成了自动转移功能,使用户能够以直观的方式探索和交互,而无需详细了解计算机图形或渲染技术。由NCI合同提供资金HHSN261200800001e。

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