food image
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Author(s):  
Tejaswini Oduru ◽  
Alexis Jordan ◽  
Albert Park

Obesity is a modern public health problem. Social media images can capture eating behavior and the potential implications to health, but research for identifying the healthiness level of the food image is relatively under-explored. This study presents a deep learning architecture that transfers features from a 152 residual layer network (ResNet) for predicting the level of healthiness of food images that were built using images from the Google images search engine gathered in 2020. Features learned from the ResNet 152 were transferred to a second network to train on the dataset. The trained SoftMax layer was stacked on top of the layers transferred from ResNet 152 to build our deep learning model. We then evaluate the performance of the model using Twitter images in order to better understand the generalizability of the methods. The results show that the model is able to predict the images into their respective classes, including Definitively Healthy, Healthy, Unhealthy and Definitively Unhealthy at an F1-score of 78.8%. This finding shows promising results for classifying social media images by healthiness, which could contribute to maintaining a balanced diet at the individual level and also understanding general food consumption trends of the public.


2021 ◽  
Vol 2021 ◽  
pp. 1-13
Author(s):  
Ying Wang ◽  
Jianbo Wu ◽  
Hui Deng ◽  
Xianghui Zeng

With the development of machine learning, as a branch of machine learning, deep learning has been applied in many fields such as image recognition, image segmentation, video segmentation, and so on. In recent years, deep learning has also been gradually applied to food recognition. However, in the field of food recognition, the degree of complexity is high, the situation is complex, and the accuracy and speed of recognition are worrying. This paper tries to solve the above problems and proposes a food image recognition method based on neural network. Combining Tiny-YOLO and twin network, this method proposes a two-stage learning mode of YOLO-SIMM and designs two versions of YOLO-SiamV1 and YOLO-SiamV2. Through experiments, this method has a general recognition accuracy. However, there is no need for manual marking, and it has a good development prospect in practical popularization and application. In addition, a method for foreign body detection and recognition in food is proposed. This method can effectively separate foreign body from food by threshold segmentation technology. Experimental results show that this method can effectively distinguish desiccant from foreign matter and achieve the desired effect.


Healthcare ◽  
2021 ◽  
Vol 9 (12) ◽  
pp. 1676
Author(s):  
Ghalib Ahmed Tahir ◽  
Chu Kiong Loo

Dietary studies showed that dietary problems such as obesity are associated with other chronic diseases, including hypertension, irregular blood sugar levels, and increased risk of heart attacks. The primary cause of these problems is poor lifestyle choices and unhealthy dietary habits, which are manageable using interactive mHealth apps. However, traditional dietary monitoring systems using manual food logging suffer from imprecision, underreporting, time consumption, and low adherence. Recent dietary monitoring systems tackle these challenges by automatic assessment of dietary intake through machine learning methods. This survey discusses the best-performing methodologies that have been developed so far for automatic food recognition and volume estimation. Firstly, the paper presented the rationale of visual-based methods for food recognition. Then, the core of the study is the presentation, discussion, and evaluation of these methods based on popular food image databases. In this context, this study discusses the mobile applications that are implementing these methods for automatic food logging. Our findings indicate that around 66.7% of surveyed studies use visual features from deep neural networks for food recognition. Similarly, all surveyed studies employed a variant of convolutional neural networks (CNN) for ingredient recognition due to recent research interest. Finally, this survey ends with a discussion of potential applications of food image analysis, existing research gaps, and open issues of this research area. Learning from unlabeled image datasets in an unsupervised manner, catastrophic forgetting during continual learning, and improving model transparency using explainable AI are potential areas of interest for future studies.


2021 ◽  
Vol 24 (2) ◽  
pp. 45-52
Author(s):  
Inad Wasa Nugroho ◽  
Siti Rahayu ◽  
Erna Andajani

Every tourist has a different motivation. One type of tourism that is currently growing very rapidly is the culinary industry. This study is to determine the experiential value of tourists in shaping the place food image of the city of Bandung and influencing behavioral intention. This causal type of quantitative research analyzes data using the Structural Equation Model equation. The results of the study found evidence of all research hypotheses proved to have a positive and significant influence relationship.


2021 ◽  
Author(s):  
Fotios S. Konstantakopoulos ◽  
Eleni I. Georga ◽  
Dimitrios I. Fotiadis

2021 ◽  
Vol 3 (4) ◽  
pp. 93-103
Author(s):  
Yongqing Yu ◽  
Yishan Zou ◽  
Yu Sun

As obesity becomes increasingly common worldwide [1], more people want to lose weight to improve their health and image. According to the Centers for Disease Control and Prevention (CDC), long-term changes in daily eating habits (such as regarding food/ nutrition type, calorie intake) are successful at keeping weights off [2]. Therefore, it would be helpful to have an artificial intelligence (AI) mobile program that identifies the types of food the user consumes and automatically calculates the total calories. This paper examines the development and optimization of an 11-categorical food classification model based on the Mobile-Net neural network using Python. Specifically, it classifies any food image as one of bread, dairy, dessert, egg product, fried food, meat, noodles, rice, seafood, soup, or fruit/vegetables. Methods of optimization include data preprocessing and learning rate and batch size adjustments. Experimental results show that scaling image inputs to standard size (Python Numpy resize) function), 300 training epochs, dynamic learning rate (start with 0.001 and *0.1 for every 30 epochs), and a batch size of 16 yields our best model of 83.44% accuracy.


2021 ◽  
Vol 8 ◽  
Author(s):  
Phawinpon Chotwanvirat ◽  
Narit Hnoohom ◽  
Nipa Rojroongwasinkul ◽  
Wantanee Kriengsinyos

Carbohydrate counting is essential for well-controlled blood glucose in people with type 1 diabetes, but to perform it precisely is challenging, especially for Thai foods. Consequently, we developed a deep learning-based system for automatic carbohydrate counting using Thai food images taken from smartphones. The newly constructed Thai food image dataset contained 256,178 ingredient objects with measured weight for 175 food categories among 75,232 images. These were used to train object detector and weight estimator algorithms. After training, the system had a Top-1 accuracy of 80.9% and a root mean square error (RMSE) for carbohydrate estimation of <10 g in the test dataset. Another set of 20 images, which contained 48 food items in total, was used to compare the accuracy of carbohydrate estimations between measured weight, system estimation, and eight experienced registered dietitians (RDs). System estimation error was 4%, while estimation errors from nearest, lowest, and highest carbohydrate among RDs were 0.7, 25.5, and 7.6%, respectively. The RMSE for carbohydrate estimations of the system and the lowest RD were 9.4 and 10.2, respectively. The system could perform with an estimation error of <10 g for 13/20 images, which placed it third behind only two of the best performing RDs: RD1 (15/20 images) and RD5 (14/20 images). Hence, the system was satisfactory in terms of accurately estimating carbohydrate content, with results being comparable with those of experienced dietitians.


2021 ◽  
Vol 39 (10) ◽  
Author(s):  
Sharina Osman ◽  
Tai Lit Cheng ◽  
Pua Chun Chin ◽  
Muna Norkhairunnisak Ustadi

This study aimed to identify factors influencing destination food image among the international tourists in Malaysia. Food tourism is becoming a trend among tourists. By trying different foods from different countries, tourists able to understand and gained knowledge on the country’s culture. In Malaysia, the food knowledge among the international tourists are limited. Although there are several Malaysian foods which are popular, it still remained unknown for the tourists. This caused international tourists to feel strange and unfamiliar with the food heritage in Malaysia. A quantitative research was carried out, where questionnaires were distributed to the international tourists in Malaysia using Google Form. Sample size of 278 respondents were collected, and Partial Least Square – Structural Equation Model (PLS-SEM), SmartPLS 3.0. was used to run the data. Result showed among the five independent variables, only Social Media do not have significant relationship with Destination Food Image. Discussion and result of these 5 variables were explained in this study. Lastly, limitations and recommendations were included to provide contribution to the future academicians who are interested in the related field.


2021 ◽  
Author(s):  
Xiongwei Wu ◽  
Xin Fu ◽  
Ying Liu ◽  
Ee-Peng Lim ◽  
Steven C.H. Hoi ◽  
...  

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