Activation to Saliency: Forming High-Quality Labels for Unsupervised Salient Object Detection

12/07/2021
by   Huajun Zhou, et al.
5

Unsupervised Salient Object Detection (USOD) is of paramount significance for both industrial applications and downstream tasks. Existing deep-learning (DL) based USOD methods utilize some low-quality saliency predictions extracted by several traditional SOD methods as saliency cues, which mainly capture some conspicuous regions in images. Furthermore, they refine these saliency cues with the assistant of semantic information, which is obtained from some models trained by supervised learning in other related vision tasks. In this work, we propose a two-stage Activation-to-Saliency (A2S) framework that effectively generates high-quality saliency cues and uses these cues to train a robust saliency detector. More importantly, no human annotations are involved in our framework during the whole training process. In the first stage, we transform a pretrained network (MoCo v2) to aggregate multi-level features to a single activation map, where an Adaptive Decision Boundary (ADB) is proposed to assist the training of the transformed network. To facilitate the generation of high-quality pseudo labels, we propose a loss function to enlarges the feature distances between pixels and their means. In the second stage, an Online Label Rectifying (OLR) strategy updates the pseudo labels during the training process to reduce the negative impact of distractors. In addition, we construct a lightweight saliency detector using two Residual Attention Modules (RAMs), which refine the high-level features using the complementary information in low-level features, such as edges and colors. Extensive experiments on several SOD benchmarks prove that our framework reports significant performance compared with existing USOD methods. Moreover, training our framework on 3000 images consumes about 1 hour, which is over 30x faster than previous state-of-the-art methods.

READ FULL TEXT

page 1

page 2

page 3

page 5

page 6

page 7

page 10

page 11

research
12/03/2021

MFNet: Multi-filter Directive Network for Weakly Supervised Salient Object Detection

Weakly supervised salient object detection (WSOD) targets to train a CNN...
research
09/28/2019

DeepUSPS: Deep Robust Unsupervised Saliency Prediction With Self-Supervision

Deep neural network (DNN) based salient object detection in images based...
research
07/04/2018

An Integration of Bottom-up and Top-Down Salient Cues on RGB-D Data: Saliency from Objectness vs. Non-Objectness

Bottom-up and top-down visual cues are two types of information that hel...
research
06/29/2017

Co-salient Object Detection Based on Deep Saliency Networks and Seed Propagation over an Integrated Graph

This paper presents a co-salient object detection method to find common ...
research
07/27/2023

Clustering of illustrations by atmosphere using a combination of supervised and unsupervised learning

The distribution of illustrations on social media, such as Twitter and P...
research
07/13/2022

Appearance-guided Attentive Self-Paced Learning for Unsupervised Salient Object Detection

Existing Deep-Learning-based (DL-based) Unsupervised Salient Object Dete...
research
05/16/2019

Leverage eye-movement data for saliency modeling: Invariance Analysis and a Robust New Model

Data size is the bottleneck for developing deep saliency models, because...

Please sign up or login with your details

Forgot password? Click here to reset