Corchs Silvia Elena, Ciocca Gianluigi, Bricolo Emanuela, Gasparini Francesca
Department of Informatics, Systems and Communication, University of Milano-Bicocca, Viale Sarca 336, 20126 Milano, Italy.
Milan Center for Neuroscience, Milano, Italy.
PLoS One. 2016 Jun 23;11(6):e0157986. doi: 10.1371/journal.pone.0157986. eCollection 2016.
The aim of this work is to predict the complexity perception of real world images. We propose a new complexity measure where different image features, based on spatial, frequency and color properties are linearly combined. In order to find the optimal set of weighting coefficients we have applied a Particle Swarm Optimization. The optimal linear combination is the one that best fits the subjective data obtained in an experiment where observers evaluate the complexity of real world scenes on a web-based interface. To test the proposed complexity measure we have performed a second experiment on a different database of real world scenes, where the linear combination previously obtained is correlated with the new subjective data. Our complexity measure outperforms not only each single visual feature but also two visual clutter measures frequently used in the literature to predict image complexity. To analyze the usefulness of our proposal, we have also considered two different sets of stimuli composed of real texture images. Tuning the parameters of our measure for this kind of stimuli, we have obtained a linear combination that still outperforms the single measures. In conclusion our measure, properly tuned, can predict complexity perception of different kind of images.
这项工作的目的是预测对真实世界图像的复杂性感知。我们提出了一种新的复杂性度量方法,其中基于空间、频率和颜色属性的不同图像特征被线性组合。为了找到最优的加权系数集,我们应用了粒子群优化算法。最优线性组合是最符合在一个实验中获得的主观数据的组合,在该实验中,观察者通过基于网络的界面评估真实世界场景的复杂性。为了测试所提出的复杂性度量方法,我们在另一个真实世界场景数据库上进行了第二个实验,其中先前获得的线性组合与新的主观数据相关。我们的复杂性度量方法不仅优于每个单一视觉特征,还优于文献中经常用于预测图像复杂性的两种视觉杂波度量方法。为了分析我们提议的有用性,我们还考虑了由真实纹理图像组成的两组不同的刺激。针对这种类型的刺激调整我们度量方法的参数,我们获得了一个仍然优于单一度量方法的线性组合。总之,我们的度量方法经过适当调整后,可以预测不同类型图像的复杂性感知。