Department of Computer Science, Engineering and Physics, University of Michigan-Flint, Flint, MI, USA.
Division of Bioinformatics and Biostatistics, National Center for Toxicological Research, US Food and Drug Administration, Jefferson, AR, USA.
Sci Rep. 2018 Apr 25;8(1):6532. doi: 10.1038/s41598-018-24926-7.
Insect pests, such as pantry beetles, are often associated with food contaminations and public health risks. Machine learning has the potential to provide a more accurate and efficient solution in detecting their presence in food products, which is currently done manually. In our previous research, we demonstrated such feasibility where Artificial Neural Network (ANN) based pattern recognition techniques could be implemented for species identification in the context of food safety. In this study, we present a Support Vector Machine (SVM) model which improved the average accuracy up to 85%. Contrary to this, the ANN method yielded ~80% accuracy after extensive parameter optimization. Both methods showed excellent genus level identification, but SVM showed slightly better accuracy for most species. Highly accurate species level identification remains a challenge, especially in distinguishing between species from the same genus which may require improvements in both imaging and machine learning techniques. In summary, our work does illustrate a new SVM based technique and provides a good comparison with the ANN model in our context. We believe such insights will pave better way forward for the application of machine learning towards species identification and food safety.
害虫,如储粮甲虫,常与食物污染和公共卫生风险有关。机器学习有潜力在检测食物产品中它们的存在方面提供更准确和高效的解决方案,目前这是手动完成的。在我们之前的研究中,我们证明了这种可行性,即在食品安全的背景下,可以实施基于人工神经网络 (ANN) 的模式识别技术来进行物种识别。在这项研究中,我们提出了一个支持向量机 (SVM) 模型,其平均准确率提高到 85%。与此相反,经过广泛的参数优化后,ANN 方法的准确率约为 80%。这两种方法都显示出了优秀的属级识别能力,但 SVM 对大多数物种的准确性略高。高度准确的种级识别仍然是一个挑战,特别是在区分同一属的物种时,这可能需要改进成像和机器学习技术。总之,我们的工作确实说明了一种新的基于 SVM 的技术,并在我们的背景下与 ANN 模型进行了很好的比较。我们相信,这些见解将为机器学习在物种识别和食品安全方面的应用铺平更好的道路。