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In the face of the situation that the network information is constantly increasing and updating, RSS provides a way to realize information sharing in the Internet age. For the technology of pushing information in RSS, which can dynamically aggregate multi-source information, provide personal service and efficient information, this paper puts forward the application of pushing technology to the field...
This paper presents a system to recognize face by a variation of LBPH. We use a method of regression of local binary features to get the landmark of face image whose computational complexity is very low. We utilize these landmark points which can be trained to align the face, to extract the facial features. By calculating the Local Binary Patterns Histogram (LBPH) of these landmark points and its...
A highly-efficient, low budget and lower power coal mine security control system based on wireless sensor networks was put forward in the paper. The overall structure of the monitoring system, hardware design of the notes, topology structure of the wireless sensor networks and the workflow of the system was stated. This system is not only monitoring various kinds of situations under the coal mine,...
To remove the redundant features extracted by using 2DPCA methods, a face recognition method is presented based on 2DPCA and fuzzy-rough technique in this paper. The proposed method selects the important features for classification by using attribute reduction in fuzzy rough sets theory. The experimental results show the proposed method outperforms the face recognition methods based on 2DPCA.
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