On the Design of a Photo Beauty Measurement Mechanism Based on Image Composition and Machine Learning ( Perception of Beauty )

Publication series : Perception of Beauty

Author: Chin-Shyurng Fahn and Meng-Luen Wu  

Publisher: IntechOpen‎

Publication year: 2017

E-ISBN: INT6602169502

P-ISBN(Paperback): 9789535135814

P-ISBN(Hardback):  9789535135821

Subject: B84 Psychology

Keyword: 心理学

Language: ENG

Access to resources Favorite

Disclaimer: Any content in publications that violate the sovereignty, the constitution or regulations of the PRC is not accepted or approved by CNPIEC.

On the Design of a Photo Beauty Measurement Mechanism Based on Image Composition and Machine Learning

Description

In this chapter, we propose a machine learning scheme on how to measure the beauty of a photo. Different from traditional measurements that focus on the quality of captured signals, the beauty of photos is based on high-level concepts from the knowledge of photo aesthetics. Because the concept of beauty is mostly defined by human being, the measurement must contain some knowledge obtained from them. Therefore, our measurement can be realized by a machine learning mechanism, which is trained by collected data from the human. There are several computational aesthetic manners used for building a photo beauty measurement system, including low-level feature extraction, image composition analysis, photo semantics parsing, and classification rule generation. Because the meaning of beauty may vary from different people, the personal preference is also taken into consideration. In this chapter, the performance of two computational aesthetic manners for the perception of beauty is evaluated, which are based on image composition analysis and low-level features to determine whether a photo meets the criterion of a professional photographing via different classifiers. The experimental results manifest that both decision tree and multilayer perceptron-based classifiers attain high accuracy of more than 90% for evaluation.

The users who browse this book also browse


No browse record.