Recognition and Analysis of Scene-Emotion in Photographic Works Based on AI Technology

IF 0.8 Q4 Computer Science
Wenbin Yang
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引用次数: 0

Abstract

Emotional effect is highly subjective in people's cognitive process, and a single discrete emotional feeling can hardly support the description of the immersion scene, which also puts forward higher requirements for emotional calculation in photography. Therefore, this article first constructs a photographic scene recognition model, and then establishes a visual emotion analysis model which optimizes the basic structure of vgg19 through CNN, extracts the user's photography situation information from the corresponding image metadata, establishes the mapping relationship between situation and emotion, and obtains the low-dimensional dense vector representation of the situation features through embedding. The authors divided eight emotional categories; accuracy of the model is compared and the feature distribution of scene-emotion in different works is analyzed. The results show that the accuracy of the scene-emotion recognition model of photographic works after multimodal fusion is high, reaching 73.9%, in addition, different shooting scenes can distinguish the emotional characteristics of works.
基于AI技术的摄影作品场景情感识别与分析
情感效果在人们的认知过程中具有高度的主观性,单一离散的情感感受很难支撑对沉浸场景的描述,这也对摄影中的情感计算提出了更高的要求。因此,本文首先构建了一个摄影场景识别模型,然后通过CNN建立了一个视觉情绪分析模型,该模型优化了vgg19的基本结构,从相应的图像元数据中提取用户的摄影情境信息,建立情境与情绪的映射关系,并通过嵌入得到态势特征的低维密集向量表示。作者将情感分为八类;比较了模型的准确性,分析了不同作品中场景情感的特征分布。结果表明,多模态融合后的摄影作品场景情感识别模型准确率较高,达到73.9%,此外,不同的拍摄场景可以区分作品的情感特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
12.50%
发文量
29
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