Theory and Methods: In the study, feature extraction methods, which are the strengths of deep learning, were operated from two different arms and aggressive changes in images were detected. In the classification process; Instead of Softmax classifier based on probability calculation, multi-layer feedback artificial neural network (MLFB-ANN) model has been used.
Results:The success of the designed system has also been compared with the Softmax classifier. As a result of experimental studies, 93.07% success rate can be achieved with Softmax classifier for six different bee diseases on the same data set, while 95.04% success rate has been obtained with the developed system.
Conclusion:In this study, a hybrid method based on deep learning methods was proposed for the classification of bee diseases and successful results were obtained.