Thông tin tài liệu
Nhan đề : | Realization of a Hybrid Locally Connected Extreme Learning Machine With DeepID for Face Verification |
Tác giả: | Wong, S. Y. |
Người tham gia: | Yap, K. S. Zhai, Q. Li, X. |
Năm xuất bản : | 2019 |
Nhà xuất bản : | IEEE Explore |
Số tùng thư/báo cáo: | IEEE Access, (2019), Vol 7, pp 70447-70460 |
Tóm tắt : | Most existing state-of-the-art deep learning algorithms discover sophisticated representations in huge datasets using convolutional neural networks (CNNs) that mainly adopt backpropagation (BP) algorithm as the backbone for training the face recognition problems. However, since decades ago, BP has been debated for causing trivial issues such as iterative gradient-descent operation, slow convergence rate, local minima, intensive human intervention, exhaustive computation, time-consuming, and so on. On the other hand, a competitive machine learning algorithm called extreme learning machine (ELM) emerged with extreme fast implementation and simple in theory has overcome the challenges faced by BP. The ELM advocates the convergence of machine learning and biological learning for pervasive learning and intelligence and has been extensively researched in widespread applications. Nonetheless, till date, none of the work of ELMhas proved its competency in tackling face veri cation problem. Hence, in this paper, we are going to probe for the rst time the feasibility of ELM-based network in handling the face veri cation task. We devise and propose a novel and distinguished hybrid local receptive eld-based extreme learning machine with DeepID (hereinafter denoted as H-ELM-LRF-DeepID), to discriminate face pairs. The experimental results on the YouTube face database, labeled faces in the wild (LFW), and CelebFaces datasets have shed light upon the feasibility and usefulness of the H-ELM-LRF-DeepID in the face veri cation task. |
URI: | http://tailieuso.tlu.edu.vn/handle/DHTL/10010 |
Nguồn trực tuyến: | http://doi.org/10.1109/ACCESS.2019.2919806 |
Trong bộ sưu tập: | Tài liệu hỗ trợ nghiên cứu khoa học |
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