首页> 外文期刊>Frontiers in Psychology >Image free-viewing as intrinsically-motivated exploration: estimating the learnability of center-of-gaze image samples in infants and adults
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Image free-viewing as intrinsically-motivated exploration: estimating the learnability of center-of-gaze image samples in infants and adults

机译:图像自由观看是一种内在的探索:估计婴儿和成人的凝视中心图像样本的可学习性

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We propose that free viewing of natural images in human infants can be understood and analyzed as the product of intrinsically-motivated visual exploration. We examined this idea by first generating five sets of center-of-gaze (COG) image samples, which were derived by presenting a series of natural images to groups of both real observers (i.e., 9-month-olds and adults) and artificial observers (i.e., an image-saliency model, an image-entropy model, and a random-gaze model). In order to assess the sequential learnability of the COG samples, we paired each group of samples with a simple recurrent network, which was trained to reproduce the corresponding sequence of COG samples. We then asked whether an intrinsically-motivated artificial agent would learn to identify the most successful network. In Simulation 1, the agent was rewarded for selecting the observer group and network with the lowest prediction errors, while in Simulation 2 the agent was rewarded for selecting the observer group and network with the largest rate of improvement. Our prediction was that if visual exploration in infants is intrinsically-motivated—and more specifically, the goal of exploration is to learn to produce sequentially-predictable gaze patterns—then the agent would show a preference for the COG samples produced by the infants over the other four observer groups. The results from both simulations supported our prediction. We conclude by highlighting the implications of our approach for understanding visual development in infants, and discussing how the model can be elaborated and improved.
机译:我们建议,可以将人类婴儿自然图像的免费观看理解和分析为内在动机的视觉探索的产物。我们首先通过生成五组凝视中心(COG)图像样本来检验了这一想法,这些样本是通过向一系列真实观察者(即9个月大的成年人和成年人)和人工观察者展示一系列自然图像而得出的观察者(即图像显着性模型,图像熵模型和随机凝视模型)。为了评估COG样本的顺序学习能力,我们将每组样本与一个简单的循环网络配对,该网络经过训练可复制相应的COG样本序列。然后,我们问一个内在动机的人工代理是否会学会识别最成功的网络。在模拟1中,代理选择了具有最低预测误差的观察者组和网络而获得奖励,而在模拟2中,代理选择了改善率最高的观察者组和网络得到了奖励。我们的预测是,如果婴儿的视觉探索是出于内在动机的,更具体地说,探索的目的是学会产生依序可预测的注视模式,那么与婴儿相比,药物更倾向于显示婴儿产生的COG样品。其他四个观察员小组。两种模拟的结果都支持我们的预测。最后,我们着重强调了我们的方法对于理解婴儿视觉发育的意义,并讨论了如何完善和改进该模型。

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