基于CDGNET体系结构的人体肢体语义分割

Mayank Lovanshi, Vivek Tiwari
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引用次数: 0

摘要

人体部位分割是一项需要为图像中的像素分配标签以识别相应身体部位类别的任务。为了提高准确性,考虑到人体的层次结构和每个部位的独特定位,开发了一种称为样本类分布的技术。该技术包括在垂直和水平两个维度上收集和应用主要的人工解析标签,以利用类的分布。将这些引导特征组合在一起,生成空间引导图,并将其纳入主干网络。这些语义引导的特征有助于通过支持语义分割的人体姿势有效识别人类活动。为了评估这种方法的有效性,我们在一个名为CIHP的大型数据集上进行了广泛的实验,使用了平均IOU、像素精度和平均精度等指标。
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Human Part Semantic Segmentation Using CDGNET Architecture for Human Activity Recognition
The segmentation of human body parts is a task that entails assigning labels to pixels in an image to identify the corresponding body part classes. To enhance accuracy, a technique known as sample class distribution was developed, considering the hierarchical structure of the human body and the unique positioning of each part. This technique involves gathering and applying primary human parsing labels in both vertical and horizontal dimensions to exploit the distribution of classes. By combining these guided features, a spatial guidance map is generated and incorporated into the backbone network. These semantic-guided features contribute to the effective recognition of human activity through semantic segmentation-enabled human pose. To assess the effectiveness of this approach, extensive experiments were performed on a large dataset called CIHP, using metrics such as mean IOU, pixel accuracy, and mean accuracy.
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