Neural Networks for Fashion Image Classification and Visual Search
- URL: http://arxiv.org/abs/2005.08170v1
- Date: Sun, 17 May 2020 05:25:41 GMT
- Title: Neural Networks for Fashion Image Classification and Visual Search
- Authors: Fengzi Li, Shashi Kant, Shunichi Araki, Sumer Bangera, Swapna Samir
Shukla
- Abstract summary: We discuss two potentially challenging problems faced by the ecommerce industry.
One relates to the problem faced by sellers while uploading pictures of products on the platform for sale and the consequent manual tagging involved.
The other problem concerns with the potential bottleneck in placing orders when a customer may not know the right keywords but has a visual impression of an image.
An image based search algorithm can unleash the true potential of ecommerce by enabling customers to click a picture of an object and search for similar products without the need for typing.
- Score: 1.8899300124593648
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We discuss two potentially challenging problems faced by the ecommerce
industry. One relates to the problem faced by sellers while uploading pictures
of products on the platform for sale and the consequent manual tagging
involved. It gives rise to misclassifications leading to its absence from
search results. The other problem concerns with the potential bottleneck in
placing orders when a customer may not know the right keywords but has a visual
impression of an image. An image based search algorithm can unleash the true
potential of ecommerce by enabling customers to click a picture of an object
and search for similar products without the need for typing. In this paper, we
explore machine learning algorithms which can help us solve both these
problems.
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