计算机科学 ›› 2025, Vol. 52 ›› Issue (10): 317-327.doi: 10.11896/jsjkx.240800060
段鹏松, 张伊航, 方焘, 曹仰杰, 王超
DUAN Pengsong, ZHANG Yihang, FANG Tao, CAO Yangjie, WANG Chao
摘要: 针对CSI中空间特征缺失导致人数识别模型精度有限且计算复杂度较高的问题,提出了一种基于幅相融合的轻量级人数识别模型WiLCount。首先,针对原始相位信息中存在载波频率偏移和采样频率偏移而无法直接使用的问题,使用线性变换方法对相位信息进行校准;其次,将幅相数据重构为二维图像,以充分利用CSI信息中蕴含的人数空间映射特征;最后,融合深度可分离卷积与多分支结构技术,设计了一种轻量级的人数识别模型WiLCount。目前,在Wi-Fi感知人数领域暂无公开数据集,为此精心构建了一个在人数规模、行为种类均处于业界领先水平的自采数据集,并已公开。实验结果表明,WiLCount在自采数据集上的识别准确率高达99.58%,参数规模仅为同类模型的4%,相比现有方法有显著提升,且具有较好的鲁棒性。
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