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Individual Eye Gaze Prediction with the Effect of Image Enhancement Using Deep Neural Networks

机译:使用深度神经网络增强图像效果的个人眼动预测

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摘要

The prediction of individual eye gaze is a research topic that has gained the interest of researchers with its wide range of applications because neural networks majorly increase the rate of accuracy of individual gaze. In this research work, MPIIGaze dataset has been employed for the prediction of individual gaze and the direction of individual gaze was grouped into down view, left view, right view and lastly centre view. A CNN model was used to train and validate a random selection of images. Firstly, the ordinary images were trained and validated, after which image enhancement processing technique was applied. With the image brightness enhancement technique, a higher rate of gaze prediction accuracy was achieved. Hence, it can be deduced that image enhancement has proved its purpose by providing image interpretation with better quality.
机译:由于神经网络极大地提高了个人注视的准确率,因此预测个人注视是一个研究主题,具有广泛的应用前景。在这项研究工作中,MPIIGaze数据集已用于预测单个注视,并且将单个注视的方向分为向下视图,左侧视图,右侧视图和最后一个中心视图。 CNN模型用于训练和验证图像的随机选择。首先,对普通图像进行训练和验证,然后应用图像增强处理技术。利用图像亮度增强技术,可以实现更高的凝视预测准确率。因此,可以推断出图像增强已经通过提供具有更好质量的图像解释而证明了其目的。

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