Yang Yuning, Mason Andrew J
IEEE Trans Neural Syst Rehabil Eng. 2017 Jun;25(6):530-538. doi: 10.1109/TNSRE.2016.2590560. Epub 2016 Jul 12.
Hardware-efficient feature extraction is an important step for real-time and on-chip spike sorting. Based on an analysis of spike energy spectrum, a new feature set is developed using the positive and negative spike peaks in low and high frequency bands. A separability metric that evaluates the informativeness and noise sensitivity of features is introduced to optimize the cutoff frequency of each band. Haar-based discrete wavelet transform was chosen to implement memory- and hardware-efficient filters for extracting frequency band separability features. Specifically, peaks from the first level detail and the fourth level approximation were used to represent a spike. To improve clustering performance, the detail features were weighted into the same dynamic range as the approximation features. The new feature extraction method was tested at different signal-to-noise ratios using synthesized datasets consisting of considerable and various spike shapes extracted from real neural recordings. The results show that the new method has 3%-10% better spike sorting performance than other hardware-efficient methods while consuming comparable hardware resources.
硬件高效的特征提取是实时和片上尖峰分类的重要步骤。基于对尖峰能量谱的分析,利用低频和高频带中的正负尖峰峰值开发了一种新的特征集。引入了一种评估特征信息性和噪声敏感性的可分离性度量,以优化每个频带的截止频率。选择基于哈尔的离散小波变换来实现内存和硬件高效的滤波器,以提取频带可分离性特征。具体而言,使用第一级细节和第四级近似的峰值来表示一个尖峰。为了提高聚类性能,将细节特征加权到与近似特征相同的动态范围内。使用由从真实神经记录中提取的大量且多样的尖峰形状组成的合成数据集,在不同信噪比下对新的特征提取方法进行了测试。结果表明,新方法在消耗相当的硬件资源的同时,尖峰分类性能比其他硬件高效方法高出3%-10%。