Image Search
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Date
2024-07
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Indian Statistical Institute, Kolkata
Abstract
With the rapid increase in digital images, it has become essential to have advanced
systems to find specific images quickly from large collections. Traditional methods
that depend on text descriptions often fail because tagging images manually
is time-consuming and subjective. This project uses deep learning to create an
efficient image search system for a dataset of about approximately 5000 printing
images.Transfer Learning technique has been implemented in this work. Transfer
learning is an ambitious task, but it results in impressive outcomes for identifying
distinct patterns in tiny datasets of approximately 5000 images of printing images
from our web site ’ARC Print’. The goal is to produced best feature vectors that
capture the important details of each image, allowing us to search based on content
rather than text.
We tested the system for accuracy and speed, showing that it works well and is
efficient. Feedback from management also confirms that the system is practical and
useful. The results indicate that our method is much better than traditional ones,
providing quick and accurate search results based on image content.This project
demonstrates the power of deep learning in image search, and it can be used in
many areas specially in online shopping. The proposed model achieved 89 % accuracy
and based on our findings,the proposed system can help to enhance the user
experience on our website far better.In the future, we aim to improve the system
further and explore more applications, highlighting the importance of advanced machine
learning in handling large collections of images.
Description
Dissertation under the guidance of Jayanta Kumar Mukherjee and Debrup Chakraborty
Keywords
ARC Print, Initial Embedding Visualization, Ground Truth Dataset Creation, Fine-Tuning Process
Citation
26p.
