Open Access
Subscription Access
Open Access
Subscription Access
Multiple Items Identification of a Image Using Deep Feature Aggregation
Subscribe/Renew Journal
Present days, individuals over the universe are getting progressively delicate to their eating routine. Unequal eating routine can cause numerous issues like weight gain, heftiness, sugar, and so forth. So various frameworks were grown to break down food pictures to compute calorie, sustenance level and so on. Food is one of the most significant necessities of each living being on earth. The individuals require their food to be new, unadulterated and of standard quality. The measures forced and computerization completed in food preparing industry deals with food quality. Presently a day, individuals over the universe are getting progressively delicate to their eating regimen. Weight is the significant reason for overweight this prompts the sort II diabetes, coronary illness and malignant growth. Estimating the food is significant for a fruitful solid eating regimen. Estimating calorie and sustenance in everyday food is one of the test techniques. Cell phone assumes a crucial job in the present innovative world utilizing this strategy will upgrade the issue in the admission of dietary utilization. In this venture, a food picture acknowledgement framework for estimating the calorie and sustenance esteem was created. The client needs to snap the photo of the food picture this framework will arrange the picture to recognize the kind of food and segment size and the acknowledgement data will gauge the quantity of calories in the food. In this framework the food region, size and volume will be utilized to figure the calorie and nourishment in an exact manner.
Keywords
BoW, CNN, DenseNet, MSMVFA, ResNet, VGG.
User
Subscription
Login to verify subscription
Font Size
Information
- L. Bossard, M. Guillaumin, and L. Van Gool, “Food101–mining discriminative components with random forests,” In: European Conference on Computer Vision, pp. 446-461, 2014.
- G. M. Farinella, M. Moltisanti, and S. Battiato, “Classifying food images represented as bag of textons,” In: IEEE International Conference on Image Processing, pp. 5212-5216, 2014.
- S. Yang, M. Chen, D. Pomerleau, and R. Sukthankar, “Food recognition using statistics of pairwise local features,” In: IEEE Conference on Computer Vision and Pattern Recognition, pp. 2249-2256, 2010.
- F. Zhou, and Y. Lin, “Fine-grained image classification by exploring bipartite-graph labels,” In: IEEE Conference on Computer Vision and Pattern Recognition, pp. 1124-1133, 2016.
Abstract Views: 340
PDF Views: 0