For the traditional threshold signature mechanism does not considers whether the nodes which generate part signature are trusted and the traditional signature strategy doesn’t do well in resisting internal attacks an...For the traditional threshold signature mechanism does not considers whether the nodes which generate part signature are trusted and the traditional signature strategy doesn’t do well in resisting internal attacks and external attacks and collusion attacks, so this paper presents a new threshold signature based on Trusted Platform Module (TPM), based on TPM the signature node first should finish the trust proof between it an other members who take part in the signature. Using a no-trusted center and the threshold of the signature policy, this strategy can track active attacks of the key management center and can prevent framing the key management center, this strategy takes into account the limited computing power TPM and has parameters of simple, beneficial full using of the limited computing power TPM.展开更多
To improve the training speed of support vector machine (SVM), a method called improved center distance ratio method (ICDRM) with determining thresholds automatically is presented here without reduce the identific...To improve the training speed of support vector machine (SVM), a method called improved center distance ratio method (ICDRM) with determining thresholds automatically is presented here without reduce the identification rate. In this method border vectors are chosen from the given samples by comparing sample vectors with center distance ratio in advance. The number of training samples is reduced greatly and the training speed is improved. This method is used to the identification for license plate characters. Experimental resuhs show that the improved SVM method-ICDRM does well at identification rate and training speed.展开更多
目的针对数据中心网络(Data Center Network,DCN)中数据流量多导致大象流与老鼠流识别精确度低的问题,提出一种基于软件定义网络(Software Defined Networking,SDN)下两阶段大象流识别算法。方法将SDN与DCN结合,第一阶段,采用高斯分布...目的针对数据中心网络(Data Center Network,DCN)中数据流量多导致大象流与老鼠流识别精确度低的问题,提出一种基于软件定义网络(Software Defined Networking,SDN)下两阶段大象流识别算法。方法将SDN与DCN结合,第一阶段,采用高斯分布动态阈值优化算法,通过对数据包阈值的设定,计算大象流误检率与漏检率,不断优化得到最优阈值,以此识别出可疑大象流;第二阶段,在依据流传输速率与流持续时间精确得到大象流的基础上,提出阈值约束、流量检测机制、Count计数器等三方面改进对大象流识别阈值下限的约束,将网络中大象流的数据量与流持续时间进行周期内阈值计算,提高大象流的识别精确度。结果实验结果表明:算法与已有相关算法相比,第一阶段可疑大象流平均字节数比网络流平均字节数多11.3%;不同阈值下的算法准确度提高1.7%,不同网络流量下的大象流平均检测时间降低至6 ms以内。结论软件定义网络下两阶段大象流识别算法在第一阶段具有较强的大象流识别能力,同时算法的精确度有所提高,大象流的平均检测时间降低,提高了网络质量,能为进行网络流量调度策略的进一步研究提供相关性条件。展开更多
文摘For the traditional threshold signature mechanism does not considers whether the nodes which generate part signature are trusted and the traditional signature strategy doesn’t do well in resisting internal attacks and external attacks and collusion attacks, so this paper presents a new threshold signature based on Trusted Platform Module (TPM), based on TPM the signature node first should finish the trust proof between it an other members who take part in the signature. Using a no-trusted center and the threshold of the signature policy, this strategy can track active attacks of the key management center and can prevent framing the key management center, this strategy takes into account the limited computing power TPM and has parameters of simple, beneficial full using of the limited computing power TPM.
基金Sponsored by the National Natural Science Foundation of China(60472110)
文摘To improve the training speed of support vector machine (SVM), a method called improved center distance ratio method (ICDRM) with determining thresholds automatically is presented here without reduce the identification rate. In this method border vectors are chosen from the given samples by comparing sample vectors with center distance ratio in advance. The number of training samples is reduced greatly and the training speed is improved. This method is used to the identification for license plate characters. Experimental resuhs show that the improved SVM method-ICDRM does well at identification rate and training speed.
文摘目的针对数据中心网络(Data Center Network,DCN)中数据流量多导致大象流与老鼠流识别精确度低的问题,提出一种基于软件定义网络(Software Defined Networking,SDN)下两阶段大象流识别算法。方法将SDN与DCN结合,第一阶段,采用高斯分布动态阈值优化算法,通过对数据包阈值的设定,计算大象流误检率与漏检率,不断优化得到最优阈值,以此识别出可疑大象流;第二阶段,在依据流传输速率与流持续时间精确得到大象流的基础上,提出阈值约束、流量检测机制、Count计数器等三方面改进对大象流识别阈值下限的约束,将网络中大象流的数据量与流持续时间进行周期内阈值计算,提高大象流的识别精确度。结果实验结果表明:算法与已有相关算法相比,第一阶段可疑大象流平均字节数比网络流平均字节数多11.3%;不同阈值下的算法准确度提高1.7%,不同网络流量下的大象流平均检测时间降低至6 ms以内。结论软件定义网络下两阶段大象流识别算法在第一阶段具有较强的大象流识别能力,同时算法的精确度有所提高,大象流的平均检测时间降低,提高了网络质量,能为进行网络流量调度策略的进一步研究提供相关性条件。