A 40-nm 169mW Ultrasound Imaging Processor Supporting Advanced Modes for Hand-Held Devices.

Yi-Lin Lo, Yu-Chen Lo, Chia-Hsiang Yang
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Abstract

Hand-held ultrasound devices have been widely used in the field of healthcare and power-efficient, real-time imaging is essential. This work presents the world's first ultrasound imaging processor supporting advanced modes, including vector flow imaging and elastography imaging. Plane-wave beamforming is utilized to ensure that the pulse repetition frequency (PRF) is sufficiently high for the advanced mode. The storage size and power consumption are minimized through algorithm-architecture co-optimization. The proposed plane-wave beamforming reduces the storage size of the required delay values by 43.7%. By exchanging the processing order, the storage size is reduced by 78.1% for elastography imaging. Parallel beamforming and interleaved firing are employed to achieve real-time imaging for all the supported modes. Fabricated in 40-nm CMOS technology, the proposed processor integrates 4.7M logic gates in core area of 3.24mm2. This work achieves a 20.3× higher beamforming rate with 5.3-to-29.1× lower power consumption than the state-of- the-art design. It also has 60% lower hardware complexity (in terms of gate count), in addition to the capability for supporting the advanced mode.

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支持手持设备高级模式的 40 纳米 169mW 超声波成像处理器。
手持式超声设备已广泛应用于医疗保健领域,高能效的实时成像至关重要。这项研究提出了世界上第一款支持矢量流成像和弹性成像等高级模式的超声成像处理器。利用平面波波束成形技术确保脉冲重复频率(PRF)足够高,以满足高级模式的需要。通过算法和架构的共同优化,最大限度地减少了存储空间和功耗。所提出的平面波波束成形可将所需延迟值的存储大小减少 43.7%。通过交换处理顺序,弹性成像的存储空间减少了 78.1%。采用并行波束成形和交错发射技术可实现所有支持模式的实时成像。所提出的处理器采用 40 纳米 CMOS 技术制造,集成了 470 万个逻辑门,核心面积为 3.24 平方毫米。与最先进的设计相比,这项工作的波束成形率提高了 20.3 倍,功耗降低了 5.3 至 29.1 倍。除了支持高级模式的能力外,它还将硬件复杂性(门数)降低了 60%。
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