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Learning to Take Good Pictures of People with a Robot Photographer

机译:学会拍摄有机器人摄影师的人们的好照片

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We present a robotic system capable of navigating autonomously by following a line and taking good quality pictures of people. When a group of people is detected, the robot rotates towards them and then back to line while continuously taking pictures from different angles. Each picture is processed in the cloud where its quality is estimated in a two-stage algorithm. First, features such as the face orientation and likelihood of facial emotions are input to a fully connected neural network to assign a quality score to each face. Second, a representation is extracted by abstracting faces from the image and it is input to a Convolutional Neural Network (CNN) to classify the quality of the overall picture. We collected a dataset in which a picture was labeled as good quality if subjects are well-positioned in the image and oriented towards the camera with a pleasant expression. Our approach detected the quality of pictures with 78.4% accuracy in this dataset and received a better mean user rating (3.71/5) than a heuristic method that uses photographic composition procedures in a study where 97 human judges rated each picture. Statistical analysis against the state-of-the-art verified the quality of the resulting pictures.
机译:我们提出了一种能够通过遵循一条线来自主导航的机器人系统,并占据良好的人的优质照片。当检测到一组人时,机器人向它们旋转,然后返回线路,同时连续地从不同角度拍摄照片。在云中处理每个图片,其中在两阶段算法中估计其质量。首先,诸如面部情绪的面部方向和可能性的特征被输入到完全连接的神经网络,以将质量得分分配给每个面。其次,通过从图像抽象面提取表示,并输入到卷积神经网络(CNN)以对整体图像的质量进行分类。我们收集了一个数据集,其中如果受试者在图像中定位并以令人愉快的表达式定向到相机,则将图片标记为好的质量。我们的方法在该数据集中检测了78.4%的精度的图片质量,并获得了比使用摄影构成程序在每张图片的97人评级的研究中使用摄影构成程序的启发式方法获得了更好的平均用户评分(3.71/5)。针对最先进的统计分析验证了所得图片的质量。

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