Skripsi
KLASIFIKASI BATU GINJAL PADA CITRA CT MENGGUNAKAN METODE CNN MODEL VGG16
Kidney stone disease is a common health issue that can lead to serious complications if not properly treated. Early and accurate detection is crucial for effective management. Therefore, this research aims to develop software for classifying kidney stones from kidney images. This software uses the Convolutional Neural Network method with the VGG16 architecture because of its excellent performance in various image classification tasks. Classification is based on coronal and axial slice images. The dataset consists of 5162 training data, 644 validation data, and 648 testing data. Experiments showed a highest accuracy rate of 99% using pre-trained layers. Based on the analysis, it is assumed that the similarity of images and patterns between classes in the dataset affects the accuracy of image recognition.
| Inventory Code | Barcode | Call Number | Location | Status |
|---|---|---|---|---|
| 2407005296 | T155711 | T1557112024 | Central Library (References) | Available but not for loan - Not for Loan |
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