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KLASIFIKASI FRAKTUR TULANG PADA CITRA RONTGEN MENGGUNAKAN METODE CANNY EDGE DETECTION DAN CONVOLUTIONAL NEURAL NETWORK
Fractures in bones are a common occurrence in the medical field. Accidents are the leading cause of such injuries in Indonesia, particularly among children and males. Currently, fracture identification through X-ray images is performed using conventional methods that rely on visual analysis by doctors, which are often inaccurate. This study proposes the use of Convolutional Neural Network (CNN) methods to classify bone fractures in X-ray images after edge detection using the Canny Edge Detection method. The system was built by training separately on humerus and forearm bones using 10 different combinations of Canny thresholds and epochs. For the humerus bone, the best result achieved an accuracy rate of 0.91 with a combination of Canny threshold 100-150 and 10 epochs. In contrast, for the forearm bone, there were three combinations with the same accuracy rate of 0.82. Canny threshold 100-150 with 10 epochs, and 150-200 and 200-255 with 25 epochs. Based on these results, this study demonstrates that the humerus bone is more suitable for developing an edge detection system compared to the forearm bone. The similar bone structure but different positions of the bones in the X-ray image dataset greatly affect the final classification results after applying Canny edge detection.
| Title | Edition | Language |
|---|---|---|
| DETEKSI KEPADATAN KENDARAAN MENGGUNAKAN METODE CANNY EDGE DETECTION | id |