Compressed sensing (CS), breaking the constriction of Shannon-Nyquist sampling theorem, is a very promising data acquisition technique in the era of multimedia big data. However, the high complexity of CS reconstruction algorithm is a big trouble for endusers who are hardly provided with great computing power. The combination of CS and cloud has the potential of freeing endusers from the resource constraint by cleverly transforming computational workload from the local cilent to the cloud platform. As a result, the low-complexity encoding virtue of CS is fully leveraged in the resource-constrained sensing devices but its highcomplexity decoding problem is effectively addressed in cloud. It seems to be perfect but privacy and security concerns are ignored. In this paper, a secure outsourcing scheme for CS reconstruction service is proposed. Experimental results and security analyses demonstrate that the proposed scheme can restrict malicious access, verify the integrity of the recovered data, and resist brute-force attack, ciphertext-only attack, and plaintext attack.
翻译:压缩遥感(CS)打破了香农-Nyquist抽样理论的收缩,是多媒体大数据时代极有希望的数据采集技术。然而,CS重建算法的高度复杂对于终端用户来说是一个大难题,他们几乎得不到巨大的计算能力。CS和云的结合有可能通过巧妙地将计算工作量从当地阴道转换到云台,使终端用户摆脱资源限制。结果,CS的低复杂编码功能在资源限制的遥感装置中得到了充分利用,但其高兼容性解码问题在云层中得到了有效解决。这似乎是完美的,但隐私和安全关切被忽视了。在本文中,提出了CS重建服务的安全外包计划。实验结果和安全分析表明,拟议的办法可以限制恶意获取数据,核查回收数据的完整性,并抵制布鲁特力攻击、密码只攻击和光文本攻击。