EffCNet: An Efficient CondenseNet for Image Classification on NXP BlueBox
Priyank Kalgaonkar, Mohamed El-Sharkawy

TL;DR
EffCNet is a novel, efficient deep CNN architecture optimized for real-time image classification on resource-constrained edge devices, demonstrating reduced model size and FLOPs while maintaining high accuracy.
Contribution
We introduce EffCNet, an improved CondenseNet variant utilizing self-querying data augmentation and depthwise separable convolutions for enhanced efficiency on edge devices.
Findings
Achieved high accuracy on CIFAR-10 and CIFAR-100 datasets.
Reduced model size and FLOPs compared to baseline networks.
Successfully deployed on NXP BlueBox for real-time inference.
Abstract
Intelligent edge devices with built-in processors vary widely in terms of capability and physical form to perform advanced Computer Vision (CV) tasks such as image classification and object detection, for example. With constant advances in the field of autonomous cars and UAVs, embedded systems and mobile devices, there has been an ever-growing demand for extremely efficient Artificial Neural Networks (ANN) for real-time inference on these smart edge devices with constrained computational resources. With unreliable network connections in remote regions and an added complexity of data transmission, it is of an utmost importance to capture and process data locally instead of sending the data to cloud servers for remote processing. Edge devices on the other hand, offer limited processing power due to their inexpensive hardware, and limited cooling and computational resources. In this…
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