
 
The proposed system was developed and 
implemented using 60 x-ray images of fractured, 
dislocated, broken, and healthy bones in different 
parts of the body. The neural network within the x-
ray image compression system learnt to associate the 
25 training images with their predetermined 
optimum compression ratios within 774 seconds. 
Once trained, the neural network could recognize the 
optimum compression ratio of an x-ray image within 
0.015 seconds 
In this work, a minimum accuracy level of 89% 
was considered as acceptable. Using this accuracy 
level, the neural network yielded 96% correct 
recognition rate of optimum compression ratios. The 
successful implementation of our proposed method 
using neural networks was shown throughout the 
high recognition rates and the minimal time costs 
when running the trained neural network. 
Future work will include the implementation of 
this method using wavelet transform compression 
and comparing its performance with DCT-based x-
ray image compression using larger database. 
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