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A Light-Weight Practical Framework for Feces Detection and Trait Recognition

机译:用于粪便检测和特征识别的轻量级实用框架

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摘要

Fecal trait examinations are critical in the clinical diagnosis of digestive diseases, and they can effectively reveal various aspects regarding the health of the digestive system. An automatic feces detection and trait recognition system based on a visual sensor could greatly alleviate the burden on medical inspectors and overcome many sanitation problems, such as infections. Unfortunately, the lack of digital medical images acquired with camera sensors due to patient privacy has obstructed the development of fecal examinations. In general, the computing power of an automatic fecal diagnosis machine or a mobile computer-aided diagnosis device is not always enough to run a deep network. Thus, a light-weight practical framework is proposed, which consists of three stages: illumination normalization, feces detection, and trait recognition. Illumination normalization effectively suppresses the illumination variances that degrade the recognition accuracy. Neither the shape nor the location is fixed, so shape-based and location-based object detection methods do not work well in this task. Meanwhile, this leads to a difficulty in labeling the images for training convolutional neural networks (CNN) in detection. Our segmentation scheme is free from training and labeling. The feces object is accurately detected with a well-designed threshold-based segmentation scheme on the selected color component to reduce the background disturbance. Finally, the preprocessed images are categorized into five classes with a light-weight shallow CNN, which is suitable for feces trait examinations in real hospital environments. The experiment results from our collected dataset demonstrate that our framework yields a satisfactory accuracy of 98.4%, while requiring low computational complexity and storage.
机译:粪便特征考试对于消化系统疾病的临床诊断至关重要,它们可以有效地揭示关于消化系统健康的各个方面。基于视觉传感器的自动粪便检测和特征识别系统可以极大地减轻医疗检查员的负担,并克服许多卫生问题,如感染。遗憾的是,由于患者隐私而使用相机传感器获取的数字医学图像缺乏粪便检查的发展。通常,自动粪便诊断机或移动计算机辅助诊断设备的计算能力并不总是足以运行深网络。因此,提出了一种轻质实际框架,其包括三个阶段:照明标准化,粪便检测和特征识别。照明归一化有效地抑制了降低识别精度的照明方差。既不是形状也不是固定的,所以基于形状的和基于位置的物体检测方法在此任务中不起作用。同时,这导致难以在检测中标记卷积神经网络(CNN)的图像。我们的细分计划免于培训和标签。用精心设计的阈值基分段方案精确地检测到粪便对象,以减少背景干扰。最后,预处理的图像被分类为五类,具有轻量级浅CNN,适用于真实医院环境中的粪便特征检查。我们收集的数据集的实验结果表明,我们的框架令人满意的精度为98.4%,同时需要低计算复杂性和储存。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者单位
  • 年(卷),期 2020(20),9
  • 年度 2020
  • 页码 2644
  • 总页数 14
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:轻量级框架;粪便特征识别;对象检测;视觉传感器;照明归一化方法;卷积神经网络;

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