计算机科学
人工智能
推论
卷积神经网络
帕斯卡(单位)
一般化
任务(项目管理)
概率逻辑
深度学习
机器学习
领域(数学分析)
深层神经网络
人工神经网络
模式识别(心理学)
经济
管理
程序设计语言
数学分析
数学
作者
Chi Li,M. Zeeshan Zia,Quoc-Huy Tran,Yu Xiang,Gregory D. Hager,Manmohan Chandraker
标识
DOI:10.1109/tpami.2018.2863285
摘要
Recent data-driven approaches to scene interpretation predominantly pose inference as an end-to-end black-box mapping, commonly performed by a Convolutional Neural Network (CNN). However, decades of work on perceptual organization in both human and machine vision suggest that there are often intermediate representations that are intrinsic to an inference task, and which provide essential structure to improve generalization. In this work, we explore an approach for injecting prior domain structure into neural network training by supervising hidden layers of a CNN with intermediate concepts that normally are not observed in practice. We formulate a probabilistic framework which formalizes these notions and predicts improved generalization via this deep supervision method. One advantage of this approach is that we are able to train only from synthetic CAD renderings of cluttered scenes, where concept values can be extracted, but apply the results to real images. Our implementation achieves the state-of-the-art performance of 2D/3D keypoint localization and image classification on real image benchmarks including KITTI, PASCAL VOC, PASCAL3D+, IKEA, and CIFAR100. We provide additional evidence that our approach outperforms alternative forms of supervision, such as multi-task networks.
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