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Spectral Signatures of Surface Materials in Pig Buildings

机译:养猪建筑表面材料的光谱特征

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Manual cleaning of pig production buildings based on high-pressure water cleaners is unappealing to workers, because it is tedious and health threatening. To replace manual cleaning, a few cleaning robots have been commercialised. With no cleanliness sensor available, the operation of these robots is to follow a cleaning procedure initially defined by the operator. Experience shows that the performance of such robots is poor regarding effectiveness of cleaning and utilisation of water. The development of an intelligent cleanliness sensor for robotic cleaning is thus crucial in order to optimise the cleaning process and to minimise the amount of water and electricity consumed. This research is aimed at utilising a spectral imaging method for cleanliness detection. Consequently, information on the reflectance of building materials and contamination in different spectral ranges is important. In this study, the optical properties of different types of surfaces to be cleaned and the dirt found in finishing pig units were investigated in the visual and the near infrared (VIS-NIR) optical range. Four types of commonly used materials in pig buildings, i.e. concrete, plastic, wood and steel were applied in the investigation. Reflectance data were sampled under controlled lighting conditions using a spectrometer communicating with a portable computer. The measurements were performed in a laboratory with materials used in a pig house for 4-5 weeks. The spectral data were collected for the surfaces before, during and after high-pressure water cleaning. The spectral signatures of the surface materials and dirt attached to the surfaces showed that it is possible to make discrimination and hence to classify areas that are visually clean. When spectral bands 450, 600, 700 and 800 nm are chosen, there are at least two spectral bands for each type of the materials, in which the spectral signals can be used for discrimination of dirty and clean condition of the surfaces.
机译:基于高压净水器的生猪养殖场的人工清洗对工人而言并不有吸引力,因为它既乏味又危害健康。为了取代手动清洁,一些清洁机器人已经商业化。在没有清洁度传感器的情况下,这些机器人的操作应遵循操作员最初定义的清洁程序。经验表明,就清洁和利用水的有效性而言,此类机器人的性能很差。因此,开发用于机器人清洁的智能清洁度传感器至关重要,以优化清洁过程并最大程度地减少水和电的消耗。这项研究旨在利用光谱成像方法进行清洁度检测。因此,有关建筑材料反射率和不同光谱范围内污染的信息非常重要。在这项研究中,在可见光和近红外(VIS-NIR)光学范围内,研究了要清洁的不同类型表面的光学特性以及在整理猪场中发现的污垢。研究中使用了四种类型的猪舍常用材料,即混凝土,塑料,木材和钢。使用与便携式计算机通信的光谱仪在受控照明条件下对反射率数据进行采样。测量是在实验室用猪舍中使用的材料进行的4-5周。在高压水清洗之前,期间和之后收集表面的光谱数据。表面材料和附着在表面上的污垢的光谱特征表明,可以进行辨别,从而对视觉上干净的区域进行分类。当选择光谱带450、600、700和800 nm时,每种类型的材料至少有两个光谱带,其中光谱信号可用于区分表面的脏污和清洁状态。

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