Image Based Computing for Food and Health Analytics: Requirements, Challenges, Solutions and Practices: Ibcfha

Tiwari, Rajeev, Koundal, Deepika, Upadhyay, Shuchi

  • 出版商: Springer
  • 出版日期: 2024-03-27
  • 售價: $7,720
  • 貴賓價: 9.5$7,334
  • 語言: 英文
  • 頁數: 246
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 3031229614
  • ISBN-13: 9783031229619
  • 海外代購書籍(需單獨結帳)

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商品描述

Increase in consumer awareness of nutritional habits has placed automatic food analysis in the spotlight in recent years. However, food-logging is cumbersome and requires sufficient knowledge of the food item consumed. Additionally, keeping track of every meal can become a tedious task. Accurately documenting dietary caloric intake is crucial to manage weight loss, but also presents challenges because most of the current methods for dietary assessment must rely on memory to recall foods eaten. Food understanding from digital media has become a challenge with important applications in many different domains. Substantial research has demonstrated that digital imaging accurately estimates dietary intake in many environments and it has many advantages over other methods. However, how to derive the food information effectively and efficiently remains a challenging and open research problem. The provided recommendations could be based on calorie counting, healthy food and specific nutritional composition. In addition, if we also consider a system able to log the food consumed by every individual along time, it could provide health-related recommendations in the long-term.

Computer Vision specialists have developed new methods for automatic food intake monitoring and food logging. Fourth Industrial Revolution [4.0 IR] technologies such as deep learning and computer vision robotics are key for sustainable food understanding. The need for AI based technologies that allow tracking of physical activities and nutrition habits are rapidly increasing and automatic analysis of food images plays an important role. Computer vision and image processing offers truly impressive advances to various applications like food analytics and healthcare analytics and can aid patients in keeping track of their calorie count easily by automating the calorie counting process. It can inform the user about the number of calories, proteins, carbohydrates, and other nutrients provided by each meal. The information is provided in real-time and thus proves to be an efficient method of nutrition tracking and can be shared with the dietician over the internet, reducing healthcare costs. This is possible by a system made up of, IoT sensors, Cloud-Fog based servers and mobile applications. These systems can generate data or images which can be analyzed using machine learning algorithms.

Image Based Computing for Food and Health Analytics covers the current status of food image analysis and presents computer vision and image processing based solutions to enhance and improve the accuracy of current measurements of dietary intake. Many solutions are presented to improve the accuracy of assessment by analyzing health images, data and food industry based images captured by mobile devices. Key technique innovations based on Artificial Intelligence and deep learning-based food image recognition algorithms are also discussed. This book examines the usageof 4.0 industrial revolution technologies such as computer vision and artificial intelligence in the field of healthcare and food industry, providing a comprehensive understanding of computer vision and intelligence methodologies which tackles the main challenges of food and health processing. Additionally, the text focuses on the employing sustainable 4 IR technologies through which consumers can attain the necessary diet and nutrients and can actively monitor their health. In focusing specifically on the food industry and healthcare analytics, it serves as a single source for multidisciplinary information involving AI and vision techniques in the food and health sector. Current advances such as Industry 4.0 and Fog-Cloud based solutions are covered in full, offering readers a fully rounded view of these rapidly advancing health and food analysis systems.

商品描述(中文翻譯)

消費者對營養習慣的認知提升,使自動食品分析在近年來成為焦點。然而,食品記錄繁瑣,且需要對所消耗的食品有足夠的了解。此外,追蹤每一餐的攝取量可能成為一項乏味的任務。準確記錄飲食熱量攝取對於管理體重減輕至關重要,但也面臨挑戰,因為目前大多數飲食評估方法必須依賴記憶來回想所吃的食物。從數位媒體理解食品已成為一項挑戰,並在許多不同領域中具有重要應用。大量研究已證明,數位影像能夠在許多環境中準確估算飲食攝取,並且相較於其他方法具有許多優勢。然而,如何有效且高效地獲取食品資訊仍然是一個具有挑戰性且未解決的研究問題。所提供的建議可以基於熱量計算、健康食品和特定的營養成分。此外,如果我們考慮一個能夠隨時間記錄每個人所消耗食品的系統,它可以在長期內提供與健康相關的建議。

計算機視覺專家已開發出自動食品攝取監測和食品記錄的新方法。第四次工業革命(4.0 IR)技術,如深度學習和計算機視覺機器人,對於可持續的食品理解至關重要。基於人工智慧的技術需求,能夠追蹤身體活動和營養習慣正在迅速增加,自動分析食品影像在其中扮演著重要角色。計算機視覺和影像處理為食品分析和健康護理分析等各種應用提供了真正令人印象深刻的進展,並能幫助患者輕鬆追蹤他們的熱量攝取,通過自動化熱量計算過程來實現。它可以即時告知用戶每餐提供的熱量、蛋白質、碳水化合物和其他營養素。這些資訊是即時提供的,因此被證明是一種有效的營養追蹤方法,並且可以通過互聯網與營養師分享,從而降低醫療成本。這是通過由物聯網(IoT)傳感器、雲霧基礎伺服器和移動應用組成的系統實現的。這些系統可以生成數據或影像,並可以使用機器學習算法進行分析。

《基於影像的食品與健康分析計算》涵蓋了食品影像分析的當前狀態,並提出基於計算機視覺和影像處理的解決方案,以增強和改善當前飲食攝取測量的準確性。許多解決方案被提出以通過分析健康影像、數據和由移動設備捕捉的食品行業影像來提高評估的準確性。基於人工智慧和深度學習的食品影像識別算法的關鍵技術創新也被討論。本書探討了第四次工業革命技術,如計算機視覺和人工智慧在醫療保健和食品行業中的應用,提供了對計算機視覺和智能方法的全面理解,這些方法解決了食品和健康處理的主要挑戰。此外,文本重點在於利用可持續的4 IR技術,使消費者能夠獲得所需的飲食和營養,並能夠主動監控他們的健康。專注於食品行業和健康護理分析,它作為一個多學科資訊的單一來源,涉及食品和健康領域的人工智慧和視覺技術。當前的進展,如工業4.0和雲霧基礎解決方案,均有全面的介紹,為讀者提供了對這些快速發展的健康和食品分析系統的全面了解。

作者簡介

Rajeev Tiwari is a professor at Bidholi, School of Computer Science, UPES in Dehradun, Uttarakhand, India
Deepika Koundal is a professor at Bidholi, School of Computer Science, UPES in Dehradun, Uttarakhand, India

Shuchi Upadhyaygh s a professor at Bidholi, School of Computer Science, UPES in Dehradun, Uttarakhand, India

作者簡介(中文翻譯)

Rajeev Tiwari 是印度烏塔拉坎德德哈倫的 UPES 資訊科學學院的教授。
Deepika Koundal 是印度烏塔拉坎德德哈倫的 UPES 資訊科學學院的教授。
Shuchi Upadhyay 是印度烏塔拉坎德德哈倫的 UPES 資訊科學學院的教授。