With noisy environment caused by fluoresence and additive white noise as well as complicated spectrum fingerprints, the identification of complex mixture materials remains a major challenge in Raman spectroscopy application. In this paper, we propose a new scheme based on a constant wavelet transform (CWT) and a deep network for classifying complex mixture. The scheme first transforms the noisy Raman spectrum to a two-dimensional scale map using CWT. A multi-label deep neural network model (MDNN) is then applied for classifying material. The proposed model accelerates the feature extraction and expands the feature graph using the global averaging pooling layer. The Sigmoid function is implemented in the last layer of the model. The MDNN model was trained, validated and tested with data collected from the samples prepared from substances in palm oil. During training and validating process, data augmentation is applied to overcome the imbalance of data and enrich the diversity of Raman spectra. From the test results, it is found that the MDNN model outperforms previously proposed deep neural network models in terms of Hamming loss, one error, coverage, ranking loss, average precision, F1 macro averaging and F1 micro averaging, respectively. The average detection time obtained from our model is 5.31 s, which is much faster than the detection time of the previously proposed models.
翻译:由荧光和添加的白色噪音以及复杂的频谱指纹造成的噪音环境十分吵闹,确定复杂的混合物材料仍然是Raman光谱应用过程中的一项重大挑战。在本文中,我们提出了一个基于恒定波盘变换(CWT)和复杂混合物分类深网络的新计划。该计划首先将吵杂的Raman光谱转换成使用CWT的二维比例尺地图。然后应用一个多标签深神经网络模型(MDNN)来对材料进行分类。拟议模型加速地貌提取,并利用全球平均集合层扩大地貌图。在模型的最后一层中实施Sigmoby 函数。MDNNM模型经过了从从棕榈油中采集的样品中收集的数据的训练、验证和测试。在培训和验证过程中,数据扩增应用来克服数据不平衡,丰富Raman光谱的多样化。从测试结果中发现,MDNN模型在Hamming损失、一个错误、覆盖、排序损失模型、平均精确度、F1宏观模型比我们先前平均测得的平均时间要快得多。