Embedded Landmark implementation for Deep Learning pre-processing

Hedi Choura, T. Frikha, M. Baklouti, Faten Chaabane
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Abstract

Due to the evolution of information technology, it is becoming increasingly easy to use new platforms in order to set up efficient systems that are well adapted to the expected needs. As part of improving security and facilitating the detection of potentially dangerous persons, an intelligent application for on-board facial recognition is being developed. It is within this framework that we propose this paper. The objective of the proposed work is twofold. On the one hand, we propose to develop a module for the detection of relevant facial characteristics, which is the first step of an intelligent video surveillance application. Based on the detection of points of interest of the Landmark algorithm, a software optimization of the work is proposed. On the other hand, this application will be decomposed in order to be embedded on a multiprocessor architecture. In order to validate the multiprocessor-based approach, a comparison with other existing powerful processor architectures will allow to validate the best approach. This work will be the input for an intelligent embedded face detection application based on Machine Learning.
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深度学习预处理的嵌入式Landmark实现
由于资讯科技的发展,越来越容易使用新的平台来建立有效的系统,以适应预期的需要。为改善保安及方便侦测潜在危险人士,当局正开发一套智能的机上面部识别系统。正是在这个框架下,我们提出了这篇论文。拟议工作的目标是双重的。一方面,我们提出开发相关面部特征的检测模块,这是智能视频监控应用的第一步。基于Landmark算法的兴趣点检测,提出了一种软件优化方法。另一方面,该应用程序将被分解,以便嵌入到多处理器体系结构中。为了验证基于多处理器的方法,与其他现有的功能强大的处理器体系结构进行比较将允许验证最佳方法。这项工作将成为基于机器学习的智能嵌入式人脸检测应用的输入。
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