4.5 Article

Speech Recognition-Based Automated Visual Acuity Testing with Adaptive Mel Filter Bank

Journal

CMC-COMPUTERS MATERIALS & CONTINUA
Volume 70, Issue 2, Pages 2991-3004

Publisher

TECH SCIENCE PRESS
DOI: 10.32604/cmc.2022.020376

Keywords

Eyesight test; speech recognition; HMM; SVM; feature extraction

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This paper proposes a novel method for measuring eyesight deficiency, utilizing an adaptive filter bank and feature extraction. The research demonstrates that this method can achieve comparable results to expert ophthalmologist tests, offering a potential second opinion for ophthalmologists and serving as a cost-effective pre-screening test.
One of the most commonly reported disabilities is vision loss, which can be diagnosed by an ophthalmologist in order to determine the visual system of a patient. This procedure, however, usually requires an appointment with an ophthalmologist, which is both time-consuming and expensive process. Other issues that can arise include a lack of appropriate equipment and trained practitioners, especially in rural areas. Centered on a cognitively motivated attribute extraction and speech recognition approach, this paper proposes a novel idea that immediately determines the eyesight deficiency. The proposed system uses an adaptive filter bank with weighted mel frequency cepstral coefficients for feature extraction. The adaptive filter bank implementation is inspired by the principle of spectrum sensing in cognitive radio that is aware of its environment and adapts to statistical variations in the input stimuli by learning from the environment. Comparative performance evaluation demonstrates the potential of our automated visual acuity test method to achieve comparable results to the clinical ground truth, established by the expert ophthalmologist's tests. The overall accuracy achieved by the proposed model when compared with the expert ophthalmologist test is 91.875%. The proposed method potentially offers a second opinion to ophthalmologists, and serves as a cost-effective pre-screening test to predict eyesight loss at an early stage.

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