NRA-Net-Neg-Region Attention Network for Salient Object Detection with Gaze Tracking

Sensors (Basel). 2021 Mar 4;21(5):1753. doi: 10.3390/s21051753.

Abstract

In this paper, we propose a detection method for salient objects whose eyes are focused on gaze tracking; this method does not require a device in a single image. A network was constructed using Neg-Region Attention (NRA), which predicts objects with a concentrated line of sight using deep learning techniques. The existing deep learning-based method has an autoencoder structure, which causes feature loss during the encoding process of compressing and extracting features from the image and the decoding process of expanding and restoring. As a result, a feature loss occurs in the area of the object from the detection results, or another area is detected as an object. The proposed method, that is, NRA, can be used for reducing feature loss and emphasizing object areas with encoders. After separating positive and negative regions using the exponential linear unit activation function, converted attention was performed for each region. The attention method provided without using the backbone network emphasized the object area and suppressed the background area. In the experimental results, the proposed method showed higher detection results than the conventional methods.

Keywords: autoencoder; convolutional neural network; deep learning; gaze tracking; image processing; salient object detection.

MeSH terms

  • Eye-Tracking Technology*
  • Neural Networks, Computer*