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Crowd saliency prediction with optimal feature combinations

机译:具有最佳特征组合的人群显着性预测

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Crowd saliency prediction refers to predicting where people look at in crowd scene. Humans have remarkable ability to rapidly direct their gaze to select visual information of interest when looking at a visual scene. Until now, research efforts are still focused on that which type of feature is representative for crowd saliency, and which type of learning model is the robust one for crowd saliency prediction. In this paper, we propose a Random Forest (RF) based crowd saliency prediction approach with optimal feature combination, i.e., the Feature Combination Selection for Crowd Saliency (FCSCS) framework. More specifically, we first define two representative crowd saliency features: FaceSizeDiff and FacePoseDiff. Next, we adopt the Random Forest (RF) algorithm to construct our saliency learning model. Then, we evaluate the performance of crowd saliency prediction classifiers with different feature combinations (fifteen combinations in our experiments). Those selected features include low-level features (i.e., color, intensity, orientation), four existing crowd features (i.e., face size, face density, frontal face, profile face) and two new defined features (i.e., FaceSizeDiff and FacePoseDiff). Finally, we obtain the optimal feature combination that is most suitable for crowd saliency prediction. We conduct extensive experiments and empirical evaluation to demonstrate the satisfactory performance of our approach.
机译:人群显着性预测是指预测人们在人群场景中所处的位置。当观察视觉场景时,人类具有非凡的能力,可以迅速引导他们的视线选择感兴趣的视觉信息。到目前为止,研究工作仍集中在哪种类型的特征可以代表人群显着性,以及哪种类型的学习模型是用于人群显着性预测的鲁棒模型。在本文中,我们提出了一种基于随机森林(RF)的人群显着性预测方法,该方法具有最佳特征组合,即人群显着性的特征组合选择(FCSCS)框架。更具体地说,我们首先定义两个代表性的人群显着性特征:FaceSizeDiff和FacePoseDiff。接下来,我们采用随机森林(RF)算法来构建我们的显着性学习模型。然后,我们评估具有不同特征组合(我们的实验中有15种组合)的人群显着性预测分类器的性能。这些选定的特征包括低级特征(即颜色,强度,方向),四个现有人群特征(即脸部大小,脸部密度,正面,轮廓脸)和两个新定义的特征(即FaceSizeDiff和FacePoseDiff)。最后,我们获得最适合人群显着性预测的最佳特征组合。我们进行了广泛的实验和经验评估,以证明我们的方法令人满意的性能。

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