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基于YOLOv8-StarNet的赤足足迹检测算法

Barefoot Footprint Detection Algorithm Based on YOLOv8-StarNet.

作者信息

Shen Yujie, Jiang Xuemei, Zhao Yabin, Xie Wenxin

机构信息

College of Investigation, People's Public Security University of China, Beijing 100000, China.

Trace Examination Technology Department, Institute of Forensic Science of China, Beijing 100000, China.

出版信息

Sensors (Basel). 2025 Jul 24;25(15):4578. doi: 10.3390/s25154578.

Abstract

This study proposes an optimized footprint recognition model based on an enhanced StarNet architecture for biometric identification in the security, medical, and criminal investigation fields. Conventional image recognition algorithms exhibit limitations in processing barefoot footprint images characterized by concentrated feature distributions and rich texture patterns. To address this, our framework integrates an improved StarNet into the backbone of YOLOv8 architecture. Leveraging the unique advantages of element-wise multiplication, the redesigned backbone efficiently maps inputs to a high-dimensional nonlinear feature space without increasing channel dimensions, achieving enhanced representational capacity with low computational latency. Subsequently, an Encoder layer facilitates feature interaction within the backbone through multi-scale feature fusion and attention mechanisms, effectively extracting rich semantic information while maintaining computational efficiency. In the feature fusion part, a feature modulation block processes multi-scale features by synergistically combining global and local information, thereby reducing redundant computations and decreasing both parameter count and computational complexity to achieve model lightweighting. Experimental evaluations on a proprietary barefoot footprint dataset demonstrate that the proposed model exhibits significant advantages in terms of parameter efficiency, recognition accuracy, and computational complexity. The number of parameters has been reduced by 0.73 million, further improving the model's speed. Gflops has been reduced by 1.5, lowering the performance requirements for computational hardware during model deployment. Recognition accuracy has reached 99.5%, with further improvements in model precision. Future research will explore how to capture shoeprint images with complex backgrounds from shoes worn at crime scenes, aiming to further enhance the model's recognition capabilities in more forensic scenarios.

摘要

本研究提出了一种基于增强型StarNet架构的优化足迹识别模型,用于安全、医疗和刑事调查领域的生物特征识别。传统的图像识别算法在处理具有集中特征分布和丰富纹理模式的赤脚足迹图像时存在局限性。为了解决这一问题,我们的框架将改进后的StarNet集成到YOLOv8架构的主干中。重新设计的主干利用逐元素乘法的独特优势,在不增加通道维度的情况下,有效地将输入映射到高维非线性特征空间,以低计算延迟实现增强的表征能力。随后,一个编码器层通过多尺度特征融合和注意力机制促进主干内的特征交互,在保持计算效率的同时有效地提取丰富的语义信息。在特征融合部分,一个特征调制块通过协同组合全局和局部信息来处理多尺度特征,从而减少冗余计算,减少参数数量和计算复杂度,以实现模型轻量化。在一个专有的赤脚足迹数据集上的实验评估表明,所提出的模型在参数效率、识别准确率和计算复杂度方面具有显著优势。参数数量减少了73万,进一步提高了模型的速度。Gflops减少了1.5,降低了模型部署期间对计算硬件的性能要求。识别准确率达到了99.5%,模型精度进一步提高。未来的研究将探索如何从犯罪现场穿着的鞋子中捕捉具有复杂背景的鞋印图像,旨在进一步提高模型在更多法医场景中的识别能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/27ca/12349430/d48b8c085160/sensors-25-04578-g001.jpg

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