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2000
Volume 18, Issue 2
  • ISSN: 2352-0965
  • E-ISSN: 2352-0973

Abstract

Introduction

Object detection has been an essential task in computer vision for decades, and modern developments in computer vision and deep learning have greatly increased the accuracy of detecting systems. However, the high computational requirements of deep learning-based object detection algorithms limit their applicability to resource-constrained systems, such as embedded devices.

Methods

With the advent of Tiny Machine Learning (TinyML) devices, such as Raspberry Pi, it has become possible to deploy object detection systems on small, low-power devices. Due to their accessibility and cost, Tiny-ML devices, such as Raspberry Pi, a single-board tiny-ML device that is extremely well-liked, have recently attracted a lot of attention.

Results

In this study, we present an enhanced SSD-based object detection approach and deploy the model using a tinyML device, , Raspberry Pi.

Conclusion

The proposed object detection model is lightweight and built utilizing Mobilenet-V2 as the underlying foundation.

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/content/journals/raeeng/10.2174/0123520965284529240407083504
2024-04-25
2025-07-08
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  • Article Type:
    Research Article
Keyword(s): CNN; DL; MoblienetV2; object detection; Raspberry-pi; SSD; Tiny-ML
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