Taketoshi Hidemasa, Inagaki Tetsuya, Tsuchikawa Satoru, Ma Te
Graduate School of Bioagricultural Sciences, Nagoya University, Furo-Cho, Chikusa, Nagoya 464-8601, Japan.
Foods. 2025 Jan 10;14(2):206. doi: 10.3390/foods14020206.
Food safety is gaining increasing attention worldwide. Currently, low-density organic foreign objects such as insects are extremely challenging to detect using conventional metal detectors and X-ray inspection systems. This study aimed to develop a visible-near-infrared single-pixel imaging (Vis-NIR-SPI) method to detect small insects inside food. The advantages of Vis-NIR light include its ability to analyze samples non-destructively and measure multiple components simultaneously and quickly, while SPI is robust against dark noise, high scattering, and high equipment costs. The experimental results demonstrated that (1) the newly designed system effectively reduces scattering effects from the highly scattering sample (intralipid 20%), allowing for the capture of information beyond the capabilities of a charge-coupled-device camera; (2) insects positioned behind ham and bread were readily detectable using the imaging reconstruction algorithm; and (3) even for chocolate samples with very high light absorption, only 1 uncontaminated sample out of 100 was mistakenly classified as contaminated, yielding an overall accuracy of 99%. This high level of accuracy underscores the potential of the Vis-NIR-SPI method to provide reliable detection while maintaining sample integrity. Furthermore, this method is cost-effective, offering a practical and efficient solution to improve quality control processes and consumer trust in the food industry.
食品安全在全球范围内日益受到关注。目前,使用传统金属探测器和X射线检测系统检测诸如昆虫等低密度有机异物极具挑战性。本研究旨在开发一种可见-近红外单像素成像(Vis-NIR-SPI)方法,用于检测食品中的小昆虫。可见-近红外光的优势包括能够对样品进行无损分析,同时快速测量多种成分,而单像素成像对暗噪声、高散射和高昂设备成本具有鲁棒性。实验结果表明:(1)新设计的系统有效降低了来自高散射样品(20% Intralipid)的散射效应,使得能够获取电荷耦合器件相机能力之外的信息;(2)使用成像重建算法可以轻松检测位于火腿和面包后面的昆虫;(3)即使对于光吸收非常高的巧克力样品,100个未受污染的样品中只有1个被误判为受污染,总体准确率达到99%。这种高准确率凸显了可见-近红外单像素成像方法在保持样品完整性的同时提供可靠检测的潜力。此外,该方法具有成本效益,为改善食品行业的质量控制流程和消费者信任提供了一种实用且高效的解决方案。