Farsiani Sirous, Sodagar Amir M
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3489-3492. doi: 10.1109/EMBC44109.2020.9175430.
In this paper a new compression technique based on the discrete Tchebichef transform is presented. To comply with strict on-implant hardware implementation requirements, such as low power dissipation and small silicon area consumption, the discrete Tchebichef transform is modified and truncated. An algorithm is proposed to generate approximate transform matrices capable of truncation without suffering from destructive energy leakage among the coefficients. This is achieved by preserving orthogonality of the basis functions that convey majority portion of the signal energy. Based on the presented algorithm, a new truncated transformation matrix is proposed, which reduces the hardware complexity by up to 74% compared to that of the original transform. Hardware implementation of the proposed neural signal compression technique is prototyped using standard digital hardware. With pre-recorded neural signals as the input, compression rate of 26.15 is achieved while the root-mean-square of error is kept as low as 1.1%.Clinical Relevance- This paper proposes a technique for data compression in high-density neural recording brain implants, along with a power- and area-efficient hardware implementation. From among clinical applications of such implants one can point to neuro-prostheses, and brain-machine interfaces for therapeutic purposes.
本文提出了一种基于离散切比雪夫变换的新型压缩技术。为了满足植入式硬件实现的严格要求,如低功耗和小硅面积消耗,对离散切比雪夫变换进行了修改和截断。提出了一种算法来生成能够截断的近似变换矩阵,且系数之间不会出现破坏性的能量泄漏。这是通过保留传达信号能量大部分的基函数的正交性来实现的。基于所提出的算法,提出了一种新的截断变换矩阵,与原始变换相比,其硬件复杂度降低了高达74%。所提出的神经信号压缩技术的硬件实现使用标准数字硬件进行了原型设计。以预先记录的神经信号作为输入,实现了26.15的压缩率,同时均方根误差保持在低至1.1%。临床相关性——本文提出了一种用于高密度神经记录脑植入物中数据压缩的技术,以及一种功耗和面积高效的硬件实现。从这类植入物的临床应用中可以指出神经假体以及用于治疗目的的脑机接口。