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引用次数: 0

摘要

在本文中,我们提出了用于生成对抗和深度学习推理架构的广义时空自适应归一化(GSTAN)框架。通过利用基于高阶导数的时间特征图和空间特征图,我们的归一化方法可以:(a)高效地生成具有更好细节和增强时间一致性的高质量视频,以及(b)对多任务的更高精度推断。为了评估模型泛化,我们对多个任务进行了实验评估,包括:视频到视频生成、视频分割和活动识别(对于给定的输入视频,从101个活动类中对活动进行分类)。在CityScape、UCF101和CK+等多种数据集上进行的详细实验分析证明了GSTAN的优越性能,并提供了其各种配置(包括并行GSTAN和顺序GSTAN)的影响。
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Generalized Spatio-Temporal Adaptive Normalization Framework
In this paper, we propose Generalized Spatio-Temporal Adaptive Normalization (GSTAN) Framework for Generative Adversarial and Deep Learning Inference Architectures. By leveraging higher-order derivatives based temporal feature maps along with spatial feature map, our normalization approach leads to: (a) efficient generation of high-quality videos with better details and enhanced temporal coherence, and, (b) higher accuracy inference on multiple tasks. In order to evaluate model generalization, we performed experimental evaluation on multiple tasks including: video to video generation, video segmentation and activity recognition (classify the activity out of 101 activity classes, for a given input video). Detailed experimental analysis over a variety of datasets including CityScape, UCF101 and CK+ demonstrates superior performance of GSTAN and also provides the impact of its various configurations, including parallel GSTAN and sequential GSTAN.
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