Brain tumors are a major worldwide health concern, which emphasizes the significance of prompt and accurate diagnosis for efficient treatment planning and management. Differentiating tumors from normal tissues is essential when assessing medical imaging. However, there are a number of challenges with traditional medical imaging techniques for brain tumor detection. Limited datasets, regulations on privacy limiting data sharing, and the requirement for specialized knowledge to correctly analyze medical images could all be obstacles to current approaches. A novel approach called Federated Learning with SNet-PC for Brain Tumor Detection and Classification (FL-SNet-PC) is proposed. This approach utilizes Federated Learning, which incorporates LP-pooled layer-assisted ShuffleNet (LP-SNet) and Parallel Convolutional Neural Network (PCNN) models. During local training, the SNet-PC method is used, which combines the LP-SNet and PCNN architectures. The local training pipeline has several stages, such as preprocessing, segmentation, and feature extraction. Initially, the input image undergoes preprocessing using the Wiener filtering technique to normalize the image. Then, precise segmentation is achieved using the Yeo-Johnson-based Balanced Iterative Reducing and Clustering Using Hierarchies (YJ-BIRCH) algorithm. After segmentation, feature extraction is done, where shape features, Grey-Level Co-Occurrence Matrix (GLCM) features, and Sobel Gradient-based Pyramid Histogram of Gradient Orientation (SG-PHOG) are captured from the segmented image. Once the local training process is completed, they are then sent to a central server for global aggregation. Finally, the global training process aids in detecting and classifying brain tumors effectively.
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