SHA-CNN: Scalable Hierarchical Aware Convolutional Neural Network for Edge AI
Narendra Singh Dhakad, Yuvnish Malhotra, Santosh Kumar Vishvakarma,, Kaushik Roy

TL;DR
SHA-CNN is a scalable, hierarchical CNN architecture optimized for resource-constrained edge devices, achieving high accuracy and adaptability on FPGA hardware across multiple datasets.
Contribution
The paper introduces SHA-CNN, a novel hierarchical CNN model that balances efficiency and accuracy, with enhanced scalability and FPGA deployment suitability.
Findings
Achieved 99.34% accuracy on MNIST
Reduced computation by 10% on CIFAR-100
Demonstrated FPGA implementation viability
Abstract
This paper introduces a Scalable Hierarchical Aware Convolutional Neural Network (SHA-CNN) model architecture for Edge AI applications. The proposed hierarchical CNN model is meticulously crafted to strike a balance between computational efficiency and accuracy, addressing the challenges posed by resource-constrained edge devices. SHA-CNN demonstrates its efficacy by achieving accuracy comparable to state-of-the-art hierarchical models while outperforming baseline models in accuracy metrics. The key innovation lies in the model's hierarchical awareness, enabling it to discern and prioritize relevant features at multiple levels of abstraction. The proposed architecture classifies data in a hierarchical manner, facilitating a nuanced understanding of complex features within the datasets. Moreover, SHA-CNN exhibits a remarkable capacity for scalability, allowing for the seamless…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · Neural Networks and Applications
MethodsAttentive Walk-Aggregating Graph Neural Network
