首页> 外文会议>2012 4th IEEE RAS amp; EMBS International Conference on Biomedical Robotics and Biomechatronics >Factor analyzed hidden Markov models for estimating prosthetic limb motions using premotor cortical ensembles
【24h】

Factor analyzed hidden Markov models for estimating prosthetic limb motions using premotor cortical ensembles

机译:因子分析的隐马尔可夫模型,用于使用运动前皮质合奏估计假肢运动

获取原文
获取原文并翻译 | 示例

摘要

Research is underway to develop neural control of prosthetic limbs. Here we propose a quantitative framework based on factor analyzed hidden Markov models (HMM) to estimate the limb motion states from cortical neuron ensembles. Limb motion states are the movement steps in the execution of a behavioral task including baseline, pre-movement planning, movement execution, and final fixation on the target peripheral object. In order to model complex motion states, we use neural recordings from ventral premotor (PMv) and dorsal premotor (PMd) neurons in a non-human primate executing instructed reach-to-grasp behavioral tasks following visual cues including pushing a button, pulling a mallet, grasping a sphere and pulling a cylinder. We estimate a factor analyzed HMM to represent the motion states, which are also called as epochs, between baseline, pre-movement planning, movement execution, and final fixation on the target peripheral object. As an extension of standard HMMs, a factor analyzed HMM has a continuous hidden layer besides the common discrete hidden layers as seen in HMMs. The continuous hidden layer is composed of a low-dimensional representation of observations obtained via the factor analysis. We find that not only our framework can achieve high decoding accuracies for different epochs of four different behavioral tasks, namely, 0.88 (±0.006) for the 1st epoch, 0.96 (±0.002) for the 2nd epoch, 0.79 (±0.015) for the 3rd epoch, and 0.89 (±0.005) for the 4th epoch, it can also estimate the latencies between epoch transitions (<150 ms). Our framework may be useful in neural decoding complex movements of prosthetic limbs.
机译:正在开展研究以对假肢进行神经控制。在这里,我们提出了一种基于因子分析的隐马尔可夫模型(HMM)的定量框架,用于从皮质神经元集合估计肢体运动状态。肢体运动状态是行为任务执行过程中的运动步骤,包括基线,运动前计划,运动执行和最终固定在目标外围对象上。为了对复杂的运动状态进行建模,我们使用来自非人类灵长类动物的腹侧前运动(PMv)和背侧运动(PMd)神经元的神经记录,执行视觉指示(包括按下按钮,拉动,槌,抓住一个球体,拉一个圆柱体。我们估计分析的HMM因子代表基线,运动前计划,运动执行和最终固定在目标外围对象之间的运动状态,也称为历元。作为标准HMM的扩展,除HMM中常见的离散离散层之外,因子分析HMM还具有连续的隐藏层。连续隐藏层由通过因子分析获得的观测值的低维表示组成。我们发现,不仅我们的框架可以针对四个不同的行为任务的不同历元实现较高的解码精度,即对于第一个 历元为0.88(±0.006),对于第二个 历元为0.96(±0.002)。 sup> nd 时期,第3 时期为0.79(±0.015),第4 时期为0.89(±0.005),它也可以估算历元转换之间的延迟(<150毫秒)。我们的框架可能对神经解码假肢的复杂运动有用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号