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Few-Shot Personalized Saliency Prediction using Person Similarity based on Collaborative Multi-Output Gaussian Process Regression

机译:基于协同多输出高斯进程回归的人相似性,几次拍摄的个性化显着性预测

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A few-shot personalized saliency prediction method using person similarity based on collaborative multi-output Gaussian process regression is presented in this paper. Contrary to prediction of general saliency maps, that of personalized saliency maps (PSMs), which is a focus of attention owing to its heterogeneity among individuals, is a challenging problem since the amount of training gaze data is limited due to the burden on new persons. Thus, the proposed method focuses on the similarity of gaze tendency between persons. In the proposed method, collaborative Gaussian process regression (CoMOGP) is adopted for PSM prediction. CoMOGP enables to represent similarity of gaze tendency between the target person and other persons as weights, and then consider the similarity for each image by using visual features obtained from images as inputs. The contributions of the few-shot PSM prediction based on CoMOGP are two-folds. 1) CoMOGP, which is one of probabilistic methods, can avoid the overfitting to small amount of training data. 2) Similarity for each image can be considered by using visual features as inputs. In the experiment using the open dataset, the proposed method outperforms comparative methods including the state-of-the-art method.
机译:本文介绍了使用基于协同多输出高斯过程回归的人相似性的几次个性化显着性预测方法。与普通显着图的预测相反,由于其个人之间的异质性,是个性化的显着性图(PSM)的焦点,这是一个具有挑战性的问题,因为由于新人的负担,培训凝视数据有限。 。因此,所提出的方法侧重于人与人之间的凝视倾向的相似性。在所提出的方法中,采用协作高斯过程回归(ComoGP)进行PSM预测。 ComoGP使目标人员与其他人与权重之间的凝视倾向的相似性,然后通过使用从图像获得的视觉特征作为输入来考虑每个图像的相似度。基于ComoGP的少量PSM预测的贡献是两倍。 1)ComoGP是概率方法之一,可以避免过度划分少量训练数据。 2)可以通过使用视觉特征作为输入来考虑每个图像的相似性。在使用开放数据集的实验中,所提出的方法优于比较方法,包括最先进的方法。

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