Tongue image constitution recognition based on Complexity Perception method
Jiajiong Ma, Guihua Wen, Yang Hu, Tianyuan Chang, Haibin Zeng, Lijun, Jiang, Jianzeng Qin

TL;DR
This paper presents a deep learning-based method for tongue image constitution recognition that improves classification accuracy by dividing datasets based on complexity, enabling fast, non-invasive diagnosis suitable for mobile devices.
Contribution
The study introduces a novel complexity-based dataset division approach combined with deep CNNs for improved tongue constitution classification in variable environments.
Findings
Improved classification accuracy by 1.135% on average.
Achieved 59.99% overall constitution classification accuracy.
Effective in complex environmental conditions.
Abstract
Background and Object: In China, body constitution is highly related to physiological and pathological functions of human body and determines the tendency of the disease, which is of great importance for treatment in clinical medicine. Tongue diagnosis, as a key part of Traditional Chinese Medicine inspection, is an important way to recognize the type of constitution.In order to deploy tongue image constitution recognition system on non-invasive mobile device to achieve fast, efficient and accurate constitution recognition, an efficient method is required to deal with the challenge of this kind of complex environment. Methods: In this work, we perform the tongue area detection, tongue area calibration and constitution classification using methods which are based on deep convolutional neural network. Subject to the variation of inconstant environmental condition, the distribution of the…
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Taxonomy
TopicsTraditional Chinese Medicine Studies · Cancer-related molecular mechanisms research
MethodsSupport Vector Machine · Softmax
