Li Congcong, Wang Bin, Li Yifan, Liu Bo
College of Information Science and Technology, Hebei Agricultural University, Baoding 071001, China.
Hebei Key Laboratory of Agricultural Big Data, Baoding 071001, China.
Sensors (Basel). 2024 Aug 28;24(17):5574. doi: 10.3390/s24175574.
As people age, abnormal gait recognition becomes a critical problem in the field of healthcare. Currently, some algorithms can classify gaits with different pathologies, but they cannot guarantee high accuracy while keeping the model lightweight. To address these issues, this paper proposes a lightweight network (NSVGT-ICBAM-FACN) based on the new side-view gait template (NSVGT), improved convolutional block attention module (ICBAM), and transfer learning that fuses convolutional features containing high-level information and attention features containing semantic information of interest to achieve robust pathological gait recognition. The NSVGT contains different levels of information such as gait shape, gait dynamics, and energy distribution at different parts of the body, which integrates and compensates for the strengths and limitations of each feature, making gait characterization more robust. The ICBAM employs parallel concatenation and depthwise separable convolution (DSC). The former strengthens the interaction between features. The latter improves the efficiency of processing gait information. In the classification head, we choose to employ DSC instead of global average pooling. This method preserves the spatial information and learns the weights of different locations, which solves the problem that the corner points and center points in the feature map have the same weight. The classification accuracies for this paper's model on the self-constructed dataset and GAIT-IST dataset are 98.43% and 98.69%, which are 0.77% and 0.59% higher than that of the SOTA model, respectively. The experiments demonstrate that the method achieves good balance between lightweightness and performance.
随着人们年龄的增长,异常步态识别成为医疗保健领域的一个关键问题。目前,一些算法可以对不同病理的步态进行分类,但它们在保持模型轻量级的同时不能保证高精度。为了解决这些问题,本文提出了一种基于新的侧视图步态模板(NSVGT)、改进的卷积块注意力模块(ICBAM)和迁移学习的轻量级网络(NSVGT-ICBAM-FACN),该网络融合了包含高级信息的卷积特征和包含感兴趣语义信息的注意力特征,以实现稳健的病理步态识别。NSVGT包含不同层次的信息,如步态形状、步态动力学以及身体不同部位的能量分布,它整合并补偿了每个特征的优势和局限性,使步态特征更加稳健。ICBAM采用并行拼接和深度可分离卷积(DSC)。前者加强了特征之间的交互。后者提高了处理步态信息的效率。在分类头中,我们选择采用DSC而不是全局平均池化。这种方法保留了空间信息并学习不同位置的权重,解决了特征图中角点和中心点权重相同的问题。本文模型在自建数据集和GAIT-IST数据集上的分类准确率分别为98.43%和98.69%,分别比SOTA模型高0.77%和0.59%。实验表明,该方法在轻量级和性能之间取得了良好的平衡。