Hyperspectral Face Recognition Using Block based Convolution Neural Network and AdaBoost Band Selection

Author(s):  
Zhihua Xie ◽  
Yi Li ◽  
Jieyi Niu ◽  
Xinhe Yu ◽  
Ling Shi
2021 ◽  
Vol 16 (2) ◽  
pp. 31
Author(s):  
Galih Rizkya Safri ◽  
Denny Irawan ◽  
Rini Puji Astutik

Ruang server merupakan ruang yang menyimpan aset-aset dan data-data penting dari suatu perusahaan sehingga keamanan untuk akses keluar masuk ruang server perlu diperhatikan agar menghindari kejadian yang tidak diinginkan. Pada saat ini sudah banyak dikembangkan sistem keamanan hingga kunci konvensional, RFID, serta sistem keamanan menggunakan teknologi biometrik seperti sidik jari, iris, dan juga wajah yang memiliki karakteristik berbeda setiap wajahnya sehingga diharapkan bisa menjadi sistem keamanan yang handal. Seiring berkembangnya teknologi membuat seseorang semakin mudah mengakses internet untuk mendapatkan data-data biometrik seperti wajah yang dapat di gunakan untuk pemalsuan atau spoofing untuk mendapatkan akses ilegal ke suatu ruangan. Penelitian sistem keamanan ini menggunakan pegenalan wajah (face recognition) dan liveness sebagai anti- spoofing dan metode Local Binary Pattern dan Convolution Neural Network untuk meningkatkan sistem keamanan agar terhindar dari pemalsuan wajah. Hasil penelitian ini mendapatkan keakuratan pendeteksian wajah asli atau palsu sebesar 90% dan akurasi sistem dalam mengenali wajah sebesar 93.3%. Kesalahan proses pengenalan wajah terjadi 5 kali dan kesalahan saat proses pengenalan wajah dan 2 kali saat pengenalan wajah asli, dari 4 skenario dengan 40 kali uji coba. Sistem keamanan pada penelitian ini 95% bekerja dengan baik dan sesuai dengan perencanaan


2020 ◽  
Vol 2 (2) ◽  
pp. 23
Author(s):  
Lei Wang

<p>As an important research achievement in the field of brain like computing, deep convolution neural network has been widely used in many fields such as computer vision, natural language processing, information retrieval, speech recognition, semantic understanding and so on. It has set off a wave of neural network research in industry and academia and promoted the development of artificial intelligence. At present, the deep convolution neural network mainly simulates the complex hierarchical cognitive laws of the human brain by increasing the number of layers of the network, using a larger training data set, and improving the network structure or training learning algorithm of the existing neural network, so as to narrow the gap with the visual system of the human brain and enable the machine to acquire the capability of "abstract concepts". Deep convolution neural network has achieved great success in many computer vision tasks such as image classification, target detection, face recognition, pedestrian recognition, etc. Firstly, this paper reviews the development history of convolutional neural networks. Then, the working principle of the deep convolution neural network is analyzed in detail. Then, this paper mainly introduces the representative achievements of convolution neural network from the following two aspects, and shows the improvement effect of various technical methods on image classification accuracy through examples. From the aspect of adding network layers, the structures of classical convolutional neural networks such as AlexNet, ZF-Net, VGG, GoogLeNet and ResNet are discussed and analyzed. From the aspect of increasing the size of data set, the difficulties of manually adding labeled samples and the effect of using data amplification technology on improving the performance of neural network are introduced. This paper focuses on the latest research progress of convolution neural network in image classification and face recognition. Finally, the problems and challenges to be solved in future brain-like intelligence research based on deep convolution neural network are proposed.</p>


Author(s):  
Sushmitha Parikibanda ◽  

For real-world applications, such as video monitoring, interaction between human machines and safety systems, face recognition is very critical. Deep learning approaches have demonstrated better results in terms of precision and processing speed in image recognition compared to conventional methods. In comparison to traditional methods. While facial detection problems with different commercial applications have been extensively studied for several decades, they still face problems with many specific scenarios, due to various problems such as severe facial occlusions, very low resolutions, intense lighting and exceptional changes in image or video compression artifacts, etc. The aim of this work is to robustly solve the issues listed above with a facial detection approach called Convolution Neural Network with Long short-term Model (CNN-mLSTM). This method first flattened the original frame, calculating the gradient image with Gaussian filter. The edge detection algorithm Canny-Kirsch Method will then be used to identify edge of the human face. The experimental findings suggest that the technique proposed exceeds the current modern methods of face detection.


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