Optical filter selection for automatic visual inspection

Matthias Richter, J. Beyerer
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引用次数: 2

Abstract

The color of a material is one of the most frequently used features in automated visual inspection systems. While this is sufficient for many “easy” tasks, mixed and organic materials usually require more complex features. Spectral signatures, especially in the near infrared range, have been proven useful in many cases. However, hyperspectral imaging devices are still very costly and too slow to use them in practice. As a work-around, off-the-shelve cameras and optical filters are used to extract few characteristic features from the spectra. Often, these filters are selected by a human expert in a time consuming and error prone process; surprisingly few works are concerned with automatic selection of suitable filters. We approach this problem by stating filter selection as feature selection problem. In contrast to existing techniques that are mainly concerned with filter design, our approach explicitly selects the best out of a large set of given filters. Our method becomes most appealing for use in an industrial setting, when this selection represents (physically) available filters. We show the application of our technique by implementing six different selection strategies and applying each to two real-world sorting problems.
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光学滤光片选择自动目视检查
材料的颜色是自动视觉检测系统中最常用的特征之一。虽然这对于许多“简单”的任务来说已经足够了,但混合材料和有机材料通常需要更复杂的特性。光谱特征,特别是在近红外范围内,已被证明在许多情况下是有用的。然而,高光谱成像设备仍然非常昂贵,而且速度太慢,无法在实践中使用。作为一种解决方案,使用现成的相机和光学滤光片从光谱中提取少量特征。通常,这些过滤器是由人类专家在一个耗时且容易出错的过程中选择的;令人惊讶的是,很少有作品涉及到自动选择合适的过滤器。我们通过将滤波器选择描述为特征选择问题来解决这个问题。与主要关注滤波器设计的现有技术相比,我们的方法明确地从一组给定的滤波器中选择最佳滤波器。当这个选择代表(物理上)可用的过滤器时,我们的方法最适合在工业环境中使用。我们通过实现六种不同的选择策略并将每种策略应用于两个现实世界的排序问题来展示我们的技术的应用。
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