Dog Breed Prediction Using Deep Learning and E-commerce
DOI:
https://doi.org/10.32628/CSEIT251445Keywords:
Computer Vision, Machine Learning, E-CommerceAbstract
This project uses computer vision and machine learning techniques to predict dog breeds from photographs and provides a trustworthy and efficient e-commerce platform for dogs. With the help of various machine learning models such as convolutional neural networks, our model gives the correct breed 90% of the time. Apart from that, our web application also provides an e-commerce platform for buying of dogs.
References
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- M. Xin and Y. Wang, “Research on image classification model based on deep convolution neural network,” EURASIP Journal on Image and Video Processing , pp. 7-8, 2019.
- M. M. krishna and M. Neelima, “Image classification using Deep learning,” International Journal of Engineering & Technology, p. 5, 2018.
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