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One-shot Learning for iEEG Seizure Detection Using End-to-end Binary Operations: Local Binary Patterns with Hyperdimensional Computing

机译:使用端到端二进制操作进行iEEG癫痫发作检测的一站式学习:具有超维计算的本地二进制模式

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This paper presents an efficient binarized algorithm for both learning and classification of human epileptic seizures from intracranial electroencephalography (iEEG). The algorithm combines local binary patterns with brain-inspired hyperdimensional computing to enable end-to-end learning and inference with binary operations. The algorithm first transforms iEEG time series from each electrode into local binary pattern codes. Then atomic high-dimensional binary vectors are used to construct composite representations of seizures across all electrodes. For the majority of our patients (10 out of 16), the algorithm quickly learns from one or two seizures (i.e., one-/few-shot learning) and perfectly generalizes on 27 further seizures. For other patients, the algorithm requires three to six seizures for learning. Overall, our algorithm surpasses the state-of-the-art methods [1] for detecting 65 novel seizures with higher specificity and sensitivity, and lower memory footprint.
机译:本文提出了一种有效的二值化算法,用于学习和分类颅内脑电图(iEEG)中的人类癫痫发作。该算法将局部二进制模式与大脑启发性的超维计算相结合,以实现端到端的学习和二进制操作的推理。该算法首先将每个电极的iEEG时间序列转换为本地二进制模式代码。然后,使用原子高维二进制矢量来构建所有电极上癫痫发作的复合表示。对于我们大多数患者(16名患者中的10名),该算法可从一两次癫痫发作中快速学习(即一次/几次射击学习),并完美概括了27次进一步的癫痫发作。对于其他患者,该算法需要三到六次癫痫发作才能学习。总体而言,我们的算法超越了最新方法[1],可检测出65种新颖的癫痫发作,具有更高的特异性和敏感性,并减少了内存占用。

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