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Image Memorability Prediction Based on Machine Learning

机译:基于机器学习的图像记忆力预测

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摘要

With the rapid development and popularization of computer network and multimedia technology, we are continuously exposed to photographs and images. Some images are easy to be remembered, but others are ignored or quickly forgotten. Previous studies have shown that image memorability is an intrinsic property of an image, which is used to measure the degree to which an image is later remembered or forgotten. Many works have shown that visual factors that influence the image memorability, such as highly memorable visual content, image depth information. Prior research has shown that image depth information has a positive relationship with its memorability score. Based on AMNet, this paper makes few improvements and utilizes depth cues to predict the image memorability scores. In this paper, the depth cues of the images are combined with the original image features to predict the final memorability score for the given image by utilizing the late fusion methodology. Experiments conducted on public image memorability datasets evaluate the effectiveness of the proposed model.
机译:随着计算机网络和多媒体技术的迅速发展和普及,我们不断接触照片和图像。有些图像易于记忆,但其他图像则被忽略或很快被遗忘。以前的研究表明,图像记忆性是图像的固有属性,用于衡量图像后来被记住或遗忘的程度。许多作品表明,影响图像记忆力的视觉因素,例如高度记忆的视觉内容,图像深度信息。先前的研究表明,图像深度信息与其记忆力得分具有正相关关系。基于AMNet,本文进行了一些改进,并利用深度提示来预测图像的记忆力得分。在本文中,将图像的深度线索与原始图像特征相结合,以利用后期融合方法来预测给定图像的最终记忆力得分。在公共图像记忆性数据集上进行的实验评估了该模型的有效性。

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