从配料到配方:基于聚类方法的yolo对象检测和推荐系统

Manasi Swain, A. R. Manyatha, Amulya S Dinesh, Gambhire Swati Sampatrao, Mihir Soni
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引用次数: 1

摘要

事业、学校、工作、生活的新冒险,这些通常是优先考虑的。健康饮食成为下一个重要的问题,所以去快餐店准备速食可能会解决与食物有关的问题,但最终会恶化健康,要么通过体重波动,要么通过能量损失,或者两者兼而有之。为了帮助克服这个问题,我们提出的模型旨在创建一个基于成分识别的食谱推荐系统。它帮助初学者、忙碌的父母、美食家和专业厨师探索厨房里的新食谱。我们的系统通过使用食材的图像来帮助用户决定他们可以用可用的资源来烹饪什么。使用YOLOv5进行成分检测。这样可以实时检测多个对象。调用API来根据每种成分的量计算卡路里。食谱检索是根据检测到的配料、卡路里计数、各种菜系和饮食类型来完成的。根据检索到的食谱以及每个食谱的营养价值,用户现在可以知道他们可以烹饪什么。基于内容的推荐系统使用K-Means聚类,根据所选食谱推荐相似的食谱。它通过节省寻找日常食谱的时间和精力来帮助改善用户体验。通过根据可访问的项目检索合适的食谱,并提供精确的食谱建议,该系统简化了人们的生活。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ingredients to Recipe: A YOLO-based Object Detector and Recommendation System via Clustering Approach
Career, school, work, new adventures of life, those are often given priority. Eating healthy becomes the next important concern, so going to a fast-food joint and preparing instant food may solve the problems related to food at the moment, but eventually it deteriorates health, either through weight fluctuation, energy loss, or both. To help overcome this, our proposed model aims to create a recipe recommendation system based on ingredient recognition. It helps explore new recipes in the kitchen for beginners, busy parents, foodies, and pro chefs alike. Our system helps users decide what they can cook with the available resources by making use of images of ingredients. YOLOv5 has been employed to detect ingredients. This enables multiple object detection in real-time. An API call is done to calculate the calorie based on the amount of each ingredient. Recipe retrieval is done considering the ingredients detected, calorie count, various cuisines, and diet types. Users now have an idea of what they can cook, according to the recipes retrieved along with the nutritional value of each recipe. Based on the chosen recipe, similar recipes will be recommended by content-based recommendation system using K-Means Clustering. It helps improve user experience by saving time and energy in finding recipes for daily routines. By retrieving the appropriate recipes based on the items that are accessible and providing precise recipe suggestions, this system simplifies people’s life.
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