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多特征量数据融合嵌入式火灾早期预警系统 被引量:11
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作者 张兴 席廷宇 +5 位作者 张恩华 邱选兵 彭英 李传亮 魏计林 王高 《计算机应用》 CSCD 北大核心 2018年第A01期249-252,共4页
为了解决传统单一点式烟气传感器识别率低、误报率高、可靠性差等不足,提出了一种嵌入式低功耗的多特征火灾早期预警系统。利用相对湿度、CO浓度、CO_2浓度和O_2浓度等四种火灾早期特征量,研制了基于CortexM3内核的采集和处理系统。对... 为了解决传统单一点式烟气传感器识别率低、误报率高、可靠性差等不足,提出了一种嵌入式低功耗的多特征火灾早期预警系统。利用相对湿度、CO浓度、CO_2浓度和O_2浓度等四种火灾早期特征量,研制了基于CortexM3内核的采集和处理系统。对榉木、棉、纸3种火灾试验材料进行了火灾早期阴燃实验,采集并分析了阴燃过程中的4个特征量,采用多特征量对数回归算法对不同温度和不同燃烧物的阴燃实验数据进行了有监督的学习。实验表明,该预警系统的识别率在90%以上,误报率在3%以下,提高了火灾早期预警的准确性和稳定性。 展开更多
关键词 火灾早期预警 嵌入式系统 多特征量融合 对数回归
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Novel feature fusion method for speech emotion recognition based on multiple kernel learning
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作者 金赟 宋鹏 +1 位作者 郑文明 赵力 《Journal of Southeast University(English Edition)》 EI CAS 2013年第2期129-133,共5页
In order to improve the performance of speech emotion recognition, a novel feature fusion method is proposed. Based on the global features, the local information of different kinds of features is utilized. Both the gl... In order to improve the performance of speech emotion recognition, a novel feature fusion method is proposed. Based on the global features, the local information of different kinds of features is utilized. Both the global and the local features are combined together. Moreover, the multiple kernel learning method is adopted. The global features and each kind of local feature are respectively associated with a kernel, and all these kernels are added together with different weights to obtain a mixed kernel for nonlinear mapping. In the reproducing kernel Hilbert space, different kinds of emotional features can be easily classified. In the experiments, the popular Berlin dataset is used, and the optimal parameters of the global and the local kernels are determined by cross-validation. After computing using multiple kernel learning, the weights of all the kernels are obtained, which shows that the formant and intensity features play a key role in speech emotion recognition. The classification results show that the recognition rate is 78. 74% by using the global kernel, and it is 81.10% by using the proposed method, which demonstrates the effectiveness of the proposed method. 展开更多
关键词 speech emotion recognition multiple kemellearning feature fusion support vector machine
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Identification Method of Gas-Liquid Two-phase Flow Regime Based on Image Multi-feature Fusion and Support Vector Machine 被引量:6
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作者 周云龙 陈飞 孙斌 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2008年第6期832-840,共9页
The knowledge of flow regime is very important for quantifying the pressure drop, the stability and safety of two-phase flow systems. Based on image multi-feature fusion and support vector machine, a new method to ide... The knowledge of flow regime is very important for quantifying the pressure drop, the stability and safety of two-phase flow systems. Based on image multi-feature fusion and support vector machine, a new method to identify flow regime in two-phase flow was presented. Firstly, gas-liquid two-phase flow images including bub- bly flow, plug flow, slug flow, stratified flow, wavy flow, annular flow and mist flow were captured by digital high speed video systems in the horizontal tube. The image moment invariants and gray level co-occurrence matrix texture features were extracted using image processing techniques. To improve the performance of a multiple classifier system, the rough sets theory was used for reducing the inessential factors. Furthermore, the support vector machine was trained by using these eigenvectors to reduce the dimension as flow regime samples, and the flow regime intelligent identification was realized. The test results showed that image features which were reduced with the rough sets theory could excellently reflect the difference between seven typical flow regimes, and successful training the support vector machine could quickly and accurately identify seven typical flow regimes of gas-liquid two-phase flow in the horizontal tube. Image multi-feature fusion method provided a new way to identify the gas-liquid two-phase flow, and achieved higher identification ability than that of single characteristic. The overall identification accuracy was 100%, and an estimate of the image processing time was 8 ms for online flow regime identification. 展开更多
关键词 flow regime identification gas-liquid two-phase flow image processing multi-feature fusion support vector machine
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