Chung-Min Wu
Kun Shan University
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Featured researches published by Chung-Min Wu.
international conference on applied system innovation | 2017
Shih-Chung Chen; Chung-Min Wu; Yeou-Jiunn Chen; Jung-Ting Chin; Yu-Yin Chen
The issue of smart home control is one of popular applications of Internet of Things (IoT). However, most of the smart home designs are for normal people, just few applications of home appliance automation are designed for the disabled. This study shows the novel implementation of home appliance automation based on a Morse code text input (McTin) controller designed by research team for the people with severe disabilities and analyzes the living behavior of the subject with disabilities according to the operation frequencies of different home appliances.
Advances in Mechanical Engineering | 2016
Chung-Min Wu; Chueh Yu Chuang; Yeou-Jiunn Chen; Shih-Chung Chen
Various physiological parameters have been widely used in the prevention and detection of diseases. In particular, the occurrence of cardiovascular diseases can be observed through daily measurement of blood pressure. Currently, the most common blood pressure measurement method records blood pressure on the upper arm. This can lead to the subject feeling uncomfortable and tension in the arm from the stress may lead to measurement errors. An electrocardiogram represents the electrical activity during heart function, but also contains blood pressure–related information. This study is an attempt to extract features related to blood pressure from the electrocardiogram signal using a new non-invasive blood pressure measurement technology that utilizes intelligent neural network algorithms to calculate blood pressure values from electrocardiogram parameters. In this study, the average error rate of the blood pressure measurement was lower than 5% compared to the common blood pressure machine. The proposed approach alleviates the errors caused by discomfort, which provides a more feasible method to continuously monitor blood pressure in less stressful conditions. This technology has significant potential for advancing healthcare.
international conference on applied system innovation | 2016
Chung-Min Wu; Shih-Chung Chen; Yeou-Jiunn Chen
This study designed a bio-signal automatic measurement analysis and warning system for the severe disabled in the long-term health care, that including a fuzzy threshold algorithm to adjust the threshold of peak detection for ECG and PPG signal that the accuracy of thirty experiment data are higher than 97% and a PTT-BP model to estimate the continue-blood pressure (BP) that is a cuff-off technology. Through the vital parameters (BP, heart rate variability (HRV), SPO2) by this system provides, the health care workers will be able to make the most appropriate treatment for patients, when the system sends alert notifications.
international conference on applied system innovation | 2016
Yeou-Jiunn Chen; Shih-Chung Chen; Chung-Min Wu
A patient with amyotrophic lateral sclerosis is difficult to talk with other people and the cognitive function is generally spared for most people. Therefore, to develop a steady state visually evoked potential based brain computer interfaces can effectively help patients. To precisely represent the characteristics of frequency responses, three types of features estimated by fast Fourier transform, power cepstrum analysis, and canonical correlation analysis are adopted. To fuse these features, a modular neural network is applied find a decision. The experimental results demonstrated that the proposed approach outperform previous approaches.
Mathematical Problems in Engineering | 2015
Yeou-Jiunn Chen; Shih-Chung Chen; Ilham A. E. Zaeni; Chung-Min Wu; Andrew Jason Tickle; Pei-Jarn Chen
The so-called amyotrophic lateral sclerosis (ALS) or motor neuron disease (MND) is a neurodegenerative disease with various causes. It is characterized by muscle spasticity, rapidly progressive weakness due to muscle atrophy, and difficulty in speaking, swallowing, and breathing. The severe disabled always have a common problem that is about communication except physical malfunctions. The steady-state visually evoked potential based brain computer interfaces (BCI), which apply visual stimulus, are very suitable to play the role of communication interface for patients with neuromuscular impairments. In this study, the entropy encoding algorithm is proposed to encode the letters of multilevel selection interface for BCI text input systems. According to the appearance frequency of each letter, the entropy encoding algorithm is proposed to construct a variable-length tree for the letter arrangement of multilevel selection interface. Then, the Gaussian mixture models are applied to recognize electrical activity of the brain. According to the recognition results, the multilevel selection interface guides the subject to spell and type the words. The experimental results showed that the proposed approach outperforms the baseline system, which does not consider the appearance frequency of each letter. Hence, the proposed approach is able to ease text input interface for patients with neuromuscular impairments.
Applied Sciences | 2016
Yeou-Jiunn Chen; Shih-Chung Chen; Ilham A. E. Zaeni; Chung-Min Wu
International Journal of Fuzzy Systems | 2017
Shih-Chung Chen; Yeou-Jiunn Chen; Ilham A. E. Zaeni; Chung-Min Wu
Microsystem Technologies-micro-and Nanosystems-information Storage and Processing Systems | 2018
Chung-Min Wu; Shih-Chung Chen; Yeou-Jiunn Chen
Microsystem Technologies-micro-and Nanosystems-information Storage and Processing Systems | 2018
Shih-Chung Chen; Chung-Min Wu; Ilham A. E. Zaeni; Yeou-Jiunn Chen
2018 IEEE International Conference on Applied System Invention (ICASI) | 2018
Yeou-Jiunn Chen; Chia-Hong Yeng; Shih-Chung Chen; Chung-Min Wu