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首页> 外文期刊>IEEE Transactions on Computers >An STT-MRAM Based in Memory Architecture for Low Power Integral Computing
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An STT-MRAM Based in Memory Architecture for Low Power Integral Computing

机译:基于存储器架构的STT-MRAM,用于低功耗整体计算

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摘要

The integral histogram image plays an important role in accelerating the feature computation in vision algorithms. However, the computational process of the integral histogram, called integral computation, has high computational complexity and numerous memory access operations, which limit its wide application. This brief proposes an in-memory computational architecture based on Spin Transfer Torque Magnetic Random Access Memory (STT-MRAM) to solve these problems. The architecture can work in two different modes depending on the requirements: the integral computation mode and the memory mode. The architecture can figure out the integral histogram when in the integral computation mode, and just store the data directly when in the memory mode. Utilizing the non-volatile, high density and low power characteristics of STT-MRAM, we integrate the computational units into the memory array to achieve parallel computation. Reduced number of data transmission between storage units and computation units contributes to cut down the latency and energy consumption. The evaluation results show that, comparing with the state-of-the-art work, our architecture provides 1.1 x similar to 9x performance improvements and reduces 87.4 similar to 97.3 percent energy consumption for 64 x 64 similar to 512 x 512 size images, just with a 8 percent area overhead.
机译:积分直方图图像在加速视觉算法中的特征计算方面发挥着重要作用。然而,集成直方图的计算过程称为积分计算,具有高计算复杂度和许多存储器访问操作,其限制了其广泛的应用。本简述提出了一种基于自旋转移扭矩磁随机存取存储器(STT-MRAM)的内存计算架构以解决这些问题。根据要求:积分计算模式和内存模式,该体系结构可以用两种不同的模式工作。在数量计算模式下,该体系结构可以弄清楚积分直方图,并且在存储器模式下只需将数据直接存储。利用STT-MRAM的非易失性,高密度和低功率特性,我们将计算单元集成到存储器阵列中以实现并行计算。减少存储单元和计算单元之间的数据传输数量有助于降低延迟和能量消耗。评估结果显示,与最先进的工作,我们的架构比较1.1 x类似于9x性能改进和减少87.4类似于97.3%的能源消耗量为64 x 64类似于512 x 512尺寸图像,只是占地8%的面积开销。

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