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首页> 外文期刊>Circuits and Systems for Video Technology, IEEE Transactions on >A Configurable Heterogeneous Multicore Architecture With Cellular Neural Network for Real-Time Object Recognition
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A Configurable Heterogeneous Multicore Architecture With Cellular Neural Network for Real-Time Object Recognition

机译:具有蜂窝神经网络的可配置异构多核体系结构,用于实时对象识别

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摘要

As object recognition requires huge computation power to deal with complex image processing tasks, it is very challenging to meet real-time processing demands under low-power constraints for embedded systems. In this paper, a configurable heterogeneous multicore architecture with a dual-mode linear processor array and a cellular neural network on the network-on-chip platform is presented for real-time object recognition. The bio-inspired attention-based object recognition algorithm is devised to reduce computational complexity of the object recognition. The cellular neural network is utilized to accelerate the visual attention algorithm for selecting salient image regions rapidly. The dual-mode parallel processor is configured into single instruction, multiple data (SIMD) or multiple-instruction-multiple-data modes to perform data-intensive image processing operations while exploiting pixel-level and feature-level parallelisms required for the attention-based object recognition. The algorithm's hybrid parallelization strategy on the proposed architecture is adopted to obtain maximum performance improvement. The performance analysis results, using a cycle-accurate architecture simulator, show that the proposed architecture achieves a speedup of 2.8 times for the target algorithm over conventional massively parallel SIMD architecture at low hardware cost overhead. A prototype chip of the proposed architecture, fabricated in 0.13 $mu {rm m}$ complementary metal-oxide-semiconductor technology, achieves 22 frames/s real-time object recognition with less than 600 mW power consumption.
机译:由于对象识别需要巨大的计算能力来处理复杂的图像处理任务,因此在低功耗约束下满足嵌入式系统的实时处理要求非常具有挑战性。在本文中,提出了一种可配置的异构多核架构,该架构具有双模线性处理器阵列和片上网络平台上的细胞神经网络,用于实时对象识别。设计了一种基于生物启发的基于注意力的目标识别算法,以降低目标识别的计算复杂度。利用细胞神经网络来加速视觉注意力算法,以快速选择显着图像区域。双模式并行处理器被配置为单指令,多数据(SIMD)或多指令多数据模式,以执行数据密集型图像处理操作,同时利用基于注意力的像素级和特征级并行性对象识别。该算法在所提出的架构上采用了混合并行化策略,以获得最大的性能提升。使用周期精确的体系结构模拟器进行的性能分析结果表明,与传统的大规模并行SIMD体系结构相比,所提出的体系结构在低硬件成本开销下的目标算法实现了2.8倍的加速。拟议架构的原型芯片采用0.13μm互补金属氧化物半导体技术制造,能够以不到600 mW的功耗实现22帧/秒的实时目标识别。

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