4.6 Article

Automatic Knee Injury Identification through Thermal Image Processing and Convolutional Neural Networks

Journal

ELECTRONICS
Volume 11, Issue 23, Pages -

Publisher

MDPI
DOI: 10.3390/electronics11233987

Keywords

infrared thermography; knee injury; image processing; convolutional neural networks

Funding

  1. Mexican Council of Science and Technology (CONACyT)
  2. [763065]

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This paper proposes a method based on infrared thermography and convolutional neural networks to differentiate between a healthy knee and an injured knee. By processing images and designing a CNN, the proposed method can automatically identify a patient with an injured knee with high accuracy. The method has the advantages of being fast, low-cost, harmless, and non-invasive.
Knee injury is a common health problem that affects both people who practice sports and those who do not do it. The high prevalence of knee injuries produces a considerable impact on the health-related life quality of patients. For this reason, it is essential to develop procedures for an early diagnosis, allowing patients to receive timely treatment for preventing and correcting knee injuries. In this regard, this paper presents, as main contribution, a methodology based on infrared thermography (IT) and convolutional neural networks (CNNs) to automatically differentiate between a healthy knee and an injured knee, being an alternative tool to help medical specialists. In general, the methodology consists of three steps: (1) database generation, (2) image processing, and (3) design and validation of a CNN for automatically identifying a patient with an injured knee. In the image-processing stage, grayscale images, equalized images, and thermal images are obtained as inputs for the CNN, where 98.72% of accuracy is obtained by the proposed method. To test its robustness, different infrared images with changes in rotation angle and different brightness levels (i.e., possible conditions at the time of imaging) are used, obtaining 97.44% accuracy. These results demonstrate the effectiveness and robustness of the proposal for differentiating between a patient with a healthy knee and an injured knee, having the advantages of using a fast, low-cost, innocuous, and non-invasive technology.

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