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Convolutional Neural Network based Automated Attendance System by using Facial Recognition Domain

机译:基于人脸识别域的基于卷积神经网络的自动考勤系统

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This project aims to recognize faces in an image, video, or via live camera using a deep learning-based Convolutional Neural Network model that is fast as well as accurate. Face recognition is a process of identifying faces in an image and has practical applications in a variety of domains, including information security, biometrics, access control, law enforcement, smart cards, and surveillance system. Deep Learning uses numerous layers to discover interpretations of data at different extraction levels. It has improved the landscape for performing research in facial recognition. The state-of-the-art implementation has been bettered by the introduction of deep learning in face recognition and has stimulated success in practical applications. Convolutional neural networks, a kind of deep neural network model has been proven to achieve success in the face recognition domain. For real-time systems, sampling must be done before using CNNs. On the other hand, complete images (all the pixel values) are passed as the input to Convolutional Neural Networks. The following steps: feature selection, feature extracti on, and training are performed in each step. This might lead to the assumption, where convolutional neural network implementation has a chance to get complicated and time-consuming.
机译:该项目旨在使用快速且准确的基于深度学习的卷积神经网络模型来识别图像,视频或通过实时摄像机中的人脸。人脸识别是识别图像中人脸的过程,在各种领域都有实际应用,包括信息安全,生物识别,访问控制,执法,智能卡和监视系统。深度学习使用许多层来发现不同提取级别的数据解释。它改善了进行面部识别研究的环境。通过在面部识别中引入深度学习,改进了最先进的实现,并刺激了其在实际应用中的成功。卷积神经网络是一种深度神经网络模型,已被证明在人脸识别领域取得了成功。对于实时系统,必须在使用CNN之前进行采样。另一方面,完整的图像(所有像素值)将作为输入传递到卷积神经网络。在每个步骤中执行以下步骤:特征选择,特征提取和训练。这可能会导致一个假设,即卷积神经网络的实现有可能变得复杂且耗时。

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