Prediction of visual attention with Deep CNN for studies of neurodegenerative diseases

S. Chaabouni, F. Tison, J. Benois-Pineau, C. Amar
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引用次数: 6

Abstract

As a part of the automatic study of visual attention of affected populations with neurodegenerative diseases and to predict whether new gaze records a complaint of these diseases, we should design an automatic model that predicts salient areas in video. Past research showed, that people suffering form dementia are not reactive with regard to degradations on still images. In this paper we study the reaction of healthy normal control subjects on degraded area in videos. Furthermore, in the goal to build an automatic prediction model for salient areas in intentionally degraded videos, we design a deep learning architecture and measure its performances when predicting salient regions on completely unseen data. The obtained results are interesting regarding the reaction of normal control subjects against a degraded area in video.
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用深度CNN预测视觉注意力用于神经退行性疾病的研究
作为神经退行性疾病患者视觉注意力自动研究的一部分,为了预测新的凝视是否记录了这些疾病的主症,我们应该设计一个自动模型来预测视频中的突出区域。过去的研究表明,患有痴呆症的人对静止图像的退化没有反应。本文研究了健康正常对照者对视频中退化区域的反应。此外,为了在故意降级的视频中建立一个显著区域的自动预测模型,我们设计了一个深度学习架构,并在完全看不见的数据上预测显著区域时测量其性能。关于正常对照对象对视频中退化区域的反应,得到了有趣的结果。
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