Li Chengran, Narayanan Ajit, Ghobakhlou Akbar
School of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Auckland 1010, New Zealand.
J Imaging. 2024 Jul 31;10(8):186. doi: 10.3390/jimaging10080186.
In the field of 2-D image processing and computer vision, accurately detecting and segmenting objects in scenarios where they overlap or are obscured remains a challenge. This difficulty is worse in the analysis of shoeprints used in forensic investigations because they are embedded in noisy environments such as the ground and can be indistinct. Traditional convolutional neural networks (CNNs), despite their success in various image analysis tasks, struggle with accurately delineating overlapping objects due to the complexity of segmenting intertwined textures and boundaries against a background of noise. This study introduces and employs the YOLO (You Only Look Once) model enhanced by edge detection and image segmentation techniques to improve the detection of overlapping shoeprints. By focusing on the critical boundary information between shoeprint textures and the ground, our method demonstrates improvements in sensitivity and precision, achieving confidence levels above 85% for minimally overlapped images and maintaining above 70% for extensively overlapped instances. Heatmaps of convolution layers were generated to show how the network converges towards successful detection using these enhancements. This research may provide a potential methodology for addressing the broader challenge of detecting multiple overlapping objects against noisy backgrounds.
在二维图像处理和计算机视觉领域,在物体重叠或被遮挡的场景中准确检测和分割物体仍然是一项挑战。在法医调查中使用的鞋印分析中,这种困难更为突出,因为鞋印嵌入在地面等嘈杂环境中,可能不清晰。传统的卷积神经网络(CNN)尽管在各种图像分析任务中取得了成功,但由于在噪声背景下分割交织纹理和边界的复杂性,在准确描绘重叠物体方面存在困难。本研究引入并采用了通过边缘检测和图像分割技术增强的YOLO(You Only Look Once)模型,以改进对重叠鞋印的检测。通过关注鞋印纹理与地面之间的关键边界信息,我们的方法在灵敏度和精度方面都有提高,对于最小重叠图像,置信度达到85%以上,对于大量重叠的情况,置信度保持在70%以上。生成了卷积层的热图,以展示网络如何利用这些增强功能朝着成功检测的方向收敛。这项研究可能为解决在嘈杂背景下检测多个重叠物体这一更广泛的挑战提供一种潜在的方法。