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A novel approach to using neural networks to predict the colour of fibre blends

机译:一种利用神经网络预测纤维混合物颜色的新方法

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摘要

This work is concerned with the colour prediction of viscose fibre blends, comparing two conventional prediction models (the Stearns–Noechel model and the Friele model) and two neural network models. A total of 333 blended samples were prepared from eight primary colours, including two-, three-, and four-colour mixtures. The performance of the prediction models was evaluated using 60 of the 333 blended samples. The other 273 samples were used to train the neural networks. It was found that the performance of both neural networks exceeded the performance of both conventional prediction models. When the neural networks were trained using the 273 training samples, the average CIELAB colour differences (between measured and predicted colour of blends) for the 60 samples in the test set were close to 1.0 for the neural network models. When the number of training samples was reduced to only 100, the performance of the neural networks degraded, but they still gave lower colour differences between measured and predicted colour than the conventional models. The first neural network was a conventional network similar to that which has been used by several other researchers; the second neural network was a novel application of a standard neural network where, rather than using a single network, a set of small neural networks was used, each of which predicted reflectance at a single wavelength. The single-wavelength neural network was shown to be more robust than the conventional neural network when the number of training examples was small.
机译:这项工作与粘胶纤维混合物的颜色预测有关,比较了两个常规预测模型(Stearns–Noechel模型和Friele模型)和两个神经网络模型。由八种原色(包括两种,三种和四种颜色的混合物)制备了总共333种混合样品。使用333个混合样本中的60个评估了预测模型的性能。其他273个样本用于训练神经网络。发现两个神经网络的性能都超过了两个常规预测模型的性能。当使用273个训练样本对神经网络进行训练时,测试集中的60个样本的平均CIELAB颜色差异(在混合物的测量颜色和预测颜色之间)对于神经网络模型而言接近1.0。当训练样本的数量减少到仅100个时,神经网络的性能下降,但与常规模型相比,它们在测量和预测的颜色之间仍然具有较低的色差。第一个神经网络是一个常规网络,类似于其他一些研究人员所使用的网络。第二个神经网络是标准神经网络的一种新颖应用,在该应用中,不是使用单个网络,而是使用一组小型神经网络,每个神经网络都预测单个波长的反射率。当训练样本数量较少时,单波长神经网络显示出比常规神经网络更强大的功能。

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    Hemingray C; Westland S;

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  • 年度 2016
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