Human Face Classification using TensorFlow and Deployment onto ASIC

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Abstract

In The project aims to develop a human face classification system using TensorFlow and deploying it onto ASIC for Biometrics applications. The Convolutional Neural Networks (CNN) Algorithm is used to classify human faces into predefined categories such as age, gender, and emotion. The CNN model will be trained using a large dataset of labelled images, and the training process will be optimized for ASIC deployment. The trained model will be deployed on an ASIC chip, which is optimized for power and speed. The large dataset will be tested for accuracy and efficiency, and its performance will be evaluated in various engineering applications, such as Security, Biometrics, and Entertainment. The project will demonstrate the feasibility of using TensorFlow Lite and ASIC for developing efficient and accurate human face classification systems for Biometrics applications.
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使用 TensorFlow 进行人脸分类并部署到 ASIC 上
该项目旨在使用TensorFlow开发一个人脸分类系统,并将其部署到ASIC上用于生物识别应用。卷积神经网络(CNN)算法用于将人脸分类为预定义的类别,如年龄、性别和情绪。CNN模型将使用标记图像的大型数据集进行训练,并且训练过程将针对ASIC部署进行优化。经过训练的模型将部署在ASIC芯片上,该芯片针对功率和速度进行了优化。该大型数据集将进行准确性和效率测试,其性能将在各种工程应用中进行评估,如安全、生物识别和娱乐。该项目将展示使用TensorFlow Lite和ASIC为生物识别应用开发高效准确的人脸分类系统的可行性。
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