Noor Fathima, Lakshmi M R, S.Tharunram, Owais Khan Hannan, Vibha S
Keywords:
Deep Learning, YoloV7, Machine Learning
Abstract
Using the YOLOv7 object identification technique, we are constructing a deep learning model to detect bone fractures in X-ray pictures in this research. We are training the model on a big dataset of labelled X-ray pictures, which includes various sorts of bone fractures, and we are employing a variety of data sources.
Enhancement approaches are used to increase its performance and resilience. The main advantage of this study is that it has the potential to help healthcare personnel diagnose bone fractures, thereby lowering diagnosis time and improving patient outcomes. The model can help radiologists and other healthcare workers make better-informed decisions regarding patient treatment by properly diagnosing the location and kind of fracture inside an X- ray picture. Overall, this initiative has the potential to have a large impact.
Article Details
Unique Paper ID: 160076
Publication Volume & Issue: Volume 9, Issue 12
Page(s): 1060 - 1064
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