RLPeri:利用强化学习和卷积特征提取加速视觉直观测试

ArXiv Pub Date : 2024-03-08 DOI:10.1609/aaai.v38i20.30247
Tanvi Verma, LinhLe Dinh, Nicholas Tan, Xinxing Xu, Chingyu Cheng, Yong Liu
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引用次数: 0

摘要

视觉周视检查是一项重要的眼科检查,有助于发现由眼部或神经系统疾病引起的视力问题。在检查过程中,患者的视线会被固定在一个特定的位置,同时中央和周边视线会受到不同强度的光刺激。根据患者对刺激的反应,可以确定视野映射和灵敏度。然而,在整个测试过程中保持高度集中的注意力对患者来说具有挑战性,会导致检查时间延长和准确性降低。在这项工作中,我们提出了基于强化学习的方法 RLPeri,以优化视觉周视测试。通过确定最佳位置序列和初始刺激值,我们旨在缩短检查时间,同时不影响准确性。此外,我们还采用了奖励塑造技术,以进一步提高测试性能。为了监测患者在测试过程中的反应,我们将测试状态表示为一对三维矩阵。我们采用两种不同的卷积核来提取不同位置的空间特征以及每个位置不同刺激值的特征。通过实验,我们证明,与最先进的方法相比,我们的方法在保持准确性的同时,还能将检查时间缩短 10-20%。我们提出的方法旨在使视觉视力测试更高效、更方便患者,同时还能提供准确的结果。
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RLPeri: Accelerating Visual Perimetry Test with Reinforcement Learning and Convolutional Feature Extraction
Visual perimetry is an important eye examination that helps detect vision problems caused by ocular or neurological conditions. During the test, a patient's gaze is fixed at a specific location while light stimuli of varying intensities are presented in central and peripheral vision. Based on the patient's responses to the stimuli, the visual field mapping and sensitivity are determined. However, maintaining high levels of concentration throughout the test can be challenging for patients, leading to increased examination times and decreased accuracy. In this work, we present RLPeri, a reinforcement learning-based approach to optimize visual perimetry testing. By determining the optimal sequence of locations and initial stimulus values, we aim to reduce the examination time without compromising accuracy. Additionally, we incorporate reward shaping techniques to further improve the testing performance. To monitor the patient's responses over time during testing, we represent the test's state as a pair of 3D matrices. We apply two different convolutional kernels to extract spatial features across locations as well as features across different stimulus values for each location. Through experiments, we demonstrate that our approach results in a 10-20% reduction in examination time while maintaining the accuracy as compared to state-of-the-art methods. With the presented approach, we aim to make visual perimetry testing more efficient and patient-friendly, while still providing accurate results.
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