priyamittal15 / Implementation-of-Different-Deep-Learning-Algorithms-for-Fracture-Detection-Image-Classification
Using-Deep-Learning-Techniques-perform-Fracture-Detection-Image-Processing Using Different Image Processing techniques Implementing Fracture Detection on X rays Images on 8000 + images of dataset Description About Project: Bones are the stiff organs that protect vital organs such as the brain, heart, lungs, and other internal organs in the hum…
☆11Updated 2 years ago
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