Li Yanlei, Wang Huaiqun, Yang Zihao, Wang Xiangwu, Wang Wenxiu, Hui Teng
Mechanical and Electrical Engineering College, Beijing Polytechnic College, Beijing 100042, China.
Modern Agricultural Engineering Key Laboratory at Universities of Education Department of Xinjiang Uygur Autonomous Region, Alaer 843300, China.
Foods. 2024 May 13;13(10):1512. doi: 10.3390/foods13101512.
Traditionally, tenderness has been assessed through shear force testing, which is inherently destructive, the accuracy is easily affected, and it results in considerable sample wastage. Although this technology has some drawbacks, it is still the most effective detection method currently available. In light of these drawbacks, non-destructive testing techniques have emerged as a preferred alternative, promising greater accuracy, efficiency, and convenience without compromising the integrity of the samples. This paper delves into applying five advanced non-destructive testing technologies in the realm of meat tenderness assessment. These include near-infrared spectroscopy, hyperspectral imaging, Raman spectroscopy, airflow optical fusion detection, and nuclear magnetic resonance detection. Each technology is scrutinized for its respective strengths and limitations, providing a comprehensive overview of their current utility and potential for future development. Moreover, the integration of these techniques with the latest advancements in artificial intelligence (AI) technology is explored. The fusion of AI with non-destructive testing offers a promising avenue for the development of more sophisticated, rapid, and intelligent systems for meat tenderness evaluation. This integration is anticipated to significantly enhance the efficiency and accuracy of the quality assessment in the meat industry, ensuring a higher standard of safety and nutritional value for consumers. The paper concludes with a set of technical recommendations to guide the future direction of non-destructive, AI-enhanced meat tenderness detection.
传统上,嫩度是通过剪切力测试来评估的,这种方法具有内在的破坏性,准确性容易受到影响,并且会导致大量的样品浪费。尽管这项技术存在一些缺点,但它仍然是目前最有效的检测方法。鉴于这些缺点,无损检测技术已成为一种首选的替代方法,有望在不影响样品完整性的情况下实现更高的准确性、效率和便利性。本文深入探讨了五种先进的无损检测技术在肉类嫩度评估领域的应用。这些技术包括近红外光谱、高光谱成像、拉曼光谱、气流光学融合检测和核磁共振检测。对每种技术的优缺点进行了审视,全面概述了它们目前的实用性和未来发展潜力。此外,还探讨了这些技术与人工智能(AI)技术最新进展的融合。AI与无损检测的融合为开发更复杂、快速和智能的肉类嫩度评估系统提供了一条有前景的途径。预计这种融合将显著提高肉类行业质量评估的效率和准确性,确保为消费者提供更高标准的安全性和营养价值。本文最后提出了一系列技术建议,以指导无损、AI增强的肉类嫩度检测的未来发展方向。