- Image Processing techniques such as Resizing, Rescaling, Reading, Standardizing etc. are used in the project.
- The model is designed using RESNET50 Deep Learning Architecture.
- The target classes to be predicted are: : beagle, chihuahua, doberman,french_bulldog, golden_retriever, malamute, pug, saint_bernard, scottish_deerhound,tibetan_mastiff.
- The model is implemneted using Tensorflow and Keras Frameworks.
- The implemenetd Deep learning Model is evaluated on measuring metrics such as Accuracy Score, Confusion Matrix, ROC-AUC Score and F1-Score.
- Also, a classification report is generated that documents an anaysis of individual classes against various metrics.
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Akarsh1/Dogs_Breed_Classification
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This is the Dogs Breed Classification Task.
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