Alapfogalmak
The author presents a method for few-shot personalized saliency prediction based on inter-personnel gaze patterns, focusing on the selection of images and preservation of structural information to improve prediction accuracy.
Kivonat
The content discusses the importance of personalized saliency maps (PSMs) in reflecting individual visual attention. It addresses the challenges in predicting PSMs due to complex gaze patterns and limited eye-tracking data. The proposed method combines adaptive image selection and tensor-based regression for effective PSM prediction. Experimental results demonstrate the benefits of these strategies for few-shot PSM prediction.
Statisztikák
"1,600 images with corresponding eye-tracking data obtained from 30 participants"
"3 layers, 0.9 momentum, 9 batch size, 1000 epochs, 3.0×10−5 learning rate"
"I = 100 common images chosen from training images"
Idézetek
"The proposed method collaboratively uses the AIS and tensor-based regression model."
"Our method outperforms all compared methods in KLdiv evaluation metric."