Deep Fusion Model for Brain Tumor Classification Using Fine-Grained Gradient Preservation
Niful Islam, Mohaiminul Islam Bhuiyan, Jarin Tasnim Raya, Nur Shazwani, Kamarudin, Khan Md Hasib, M. F. Mridha, Dewan Md. Farid

TL;DR
This paper introduces a lightweight, high-accuracy brain tumor classification model that combines pretrained neural networks with fine-grained gradient preservation, optimized for deployment in resource-limited settings.
Contribution
The study proposes a novel fusion architecture with fine-tuning and quantization techniques, achieving high accuracy and low computational complexity for brain tumor classification.
Findings
Achieved over 98% accuracy on benchmark datasets.
Reduced model size by over 75% using 8-bit quantization.
Model is suitable for deployment on edge devices in underdeveloped regions.
Abstract
Brain tumors are one of the most common diseases that lead to early death if not diagnosed at an early stage. Traditional diagnostic approaches are extremely time-consuming and prone to errors. In this context, computer vision-based approaches have emerged as an effective tool for accurate brain tumor classification. While some of the existing solutions demonstrate noteworthy accuracy, the models become infeasible to deploy in areas where computational resources are limited. This research addresses the need for accurate and fast classification of brain tumors with a priority of deploying the model in technologically underdeveloped regions. The research presents a novel architecture for precise brain tumor classification fusing pretrained ResNet152V2 and modified VGG16 models. The proposed architecture undergoes a diligent fine-tuning process that ensures fine gradients are preserved in…
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Taxonomy
TopicsBrain Tumor Detection and Classification
