A modified time adaptive self-organizing map with stochastic gradient descent optimizer for automated food recognition system

IF 2.7 2区 农林科学 Q1 ENTOMOLOGY
Jameer Gulab Kotwal, Shweta Koparde, Chaya Jadhav, Rajesh Bharati, Rachna Somkunwar, Vinod kimbahune
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引用次数: 0

Abstract

Numerous decades of study have been devoted to associating artificial intelligence and culinary type recognition. Automated food identification systems are significant in many disciplines, comprising dietary valuation, menu analysis, and nutritional tracking. In the past, traditional image analysis algorithms caused in poor classification accuracy, but deep learning methods have enabled the identification of food types and its constituents. This study proposed a novel method to develop food recognition competence and accuracy by connecting a Stochastic Gradient Descent (SGD) optimizer to a Modified Time Adaptive Self-Organizing Map (MTA-SOM). Food arrival differences subsequent from lighting, changing perspectives, and occlusions sometimes provide challenges to traditional food recognition algorithms. In this research, propose an MTA-SOM that learns and adapts to changing food item appearances by dynamically changing its topology over time. This research leverages the self-organizing possessions of SOMs and the fine-tuning properties of SGD by relating the MTA-SOM and the SGD optimizer, thereby maximizing the advantages of both techniques. The research method includes collecting a large number of food images from a difference of cuisines and presentation styles in order to assess the effectiveness of the proposed method. This proposed method performs an extensive test and connect MTA-SOM and SGD to present approaches of food recognition. Important advances in precision and robustness are produced as the system learns to recognize food items more precisely and adapts to changes in food appearance. By automating food detection with high precision and adaptability, our method could revolutionize our capability to interact with food-related data and offer important insights into dietary practices and nutritious decisions.

用于自动食品识别系统的改进型时间自适应自组织图与随机梯度下降优化器
数十年来,人们一直致力于将人工智能与烹饪类型识别联系起来。自动食品识别系统在许多学科中都具有重要意义,包括膳食评估、菜单分析和营养跟踪。过去,传统的图像分析算法导致分类准确率较低,而深度学习方法则实现了对食物类型及其成分的识别。本研究提出了一种新方法,通过将随机梯度下降(SGD)优化器与修正时间自适应自组织图(MTA-SOM)相结合,提高食物识别能力和准确性。光照、视角变化和遮挡等因素造成的食物到达差异有时会给传统的食物识别算法带来挑战。在这项研究中,我们提出了一种 MTA-SOM,它可以通过随时间动态改变拓扑结构来学习和适应不断变化的食品外观。本研究利用 SOM 的自组织特性和 SGD 的微调特性,将 MTA-SOM 和 SGD 优化器联系起来,从而最大限度地发挥了两种技术的优势。研究方法包括收集大量不同菜系和表现风格的食物图像,以评估所提议方法的有效性。所提出的方法进行了广泛的测试,并将 MTA-SOM 和 SGD 与现有的食物识别方法进行了比较。随着系统学会更精确地识别食品并适应食品外观的变化,在精确度和鲁棒性方面都取得了重要进展。通过高精度和高适应性的食品自动检测,我们的方法可以彻底改变我们与食品相关数据交互的能力,并为饮食实践和营养决策提供重要见解。
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来源期刊
CiteScore
5.70
自引率
18.50%
发文量
112
审稿时长
45 days
期刊介绍: The Journal of Stored Products Research provides an international medium for the publication of both reviews and original results from laboratory and field studies on the preservation and safety of stored products, notably food stocks, covering storage-related problems from the producer through the supply chain to the consumer. Stored products are characterised by having relatively low moisture content and include raw and semi-processed foods, animal feedstuffs, and a range of other durable items, including materials such as clothing or museum artefacts.
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