基于动作的视频美学的深度学习

M. Phatak, Manasi S. Patwardhan, Meenakshi S. Arya
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引用次数: 2

摘要

美学是由艺术和美的属性所定义的,因此它是一个非常主观的领域。在我们的日常生活中,随着多媒体需求的增加,图像和视频的审美吸引力在广告、电影制作、用户界面设计、社交网络等各个领域都得到了越来越多的重视。视觉属性极大地影响着观者的审美感受。在本文中,首先,我们深入研究了有助于图像审美吸引力的低层次,中级和高级图像属性的细节。视频与图像共享其属性,除了视频中存在运动。接下来,我们将继续进行手工制作和深度学习技术,以评估图像和视频属性的美学吸引力。运动是影响视频审美吸引力的一个重要但很少被探索的视觉属性。通常情况下,慢动作会在观众中产生影响和欣赏,因为与视频中的快速动作相比,他们能更好地吸收视频中的内容。调查显示,与快节奏的视频相比,人们更喜欢慢节奏的视频。我们已经试验了深度学习框架来检测基于自然的视频中的运动。与手工制作的方法相比,深度学习取得了令人印象深刻的表现,从而加强了当前对多媒体分析的深度学习框架的信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for motion based video aesthetics
Aesthetics is defined by the properties of arts and beauty, thus making it a very subjective domain. In our day to day lives, with the increase of multimedia requirements, the aesthetic appeal of images and videos has gained much importance in varied fields like advertising, film making, User-Interface design, social networking etc. Visual attributes greatly affect the aesthetic sense of the viewers. In this paper, to start with, we dive into the details of low level, middle level and high level image attributes that contribute towards the aesthetic appeal of images. Videos share their attributes with images except for the presence of motion in a video. Next, we proceed towards the handcrafted and deep learning techniques for assessing image and video attributes for their aesthetic appeal. Motion is an important but seldom explored visual attribute that affects video aesthetic appeal. Typically, slow motion creates an impact and appreciation amongst the viewers as they absorb the contents of the video better in comparison to faster motion in the video. Surveys conducted showcased the human inclination towards slowly paced videos in comparison to the fast-paced ones. We have experimented with the deep learning framework for detecting motion in nature based videos. Deep learning achieves an impressive performance in comparison to the handcrafted methods, thus reinforcing current trust in the deep learning frameworks for multimedia analysis.
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