SaltiNet: Scan-path Prediction on 360 Degree Images using Saliency Volumes

07/11/2017
by   Marc Assens, et al.
0

We introduce SaltiNet, a deep neural network for scanpath prediction trained on 360-degree images. The model is based on a temporal-aware novel representation of saliency information named the saliency volume. The first part of the network consists of a model trained to generate saliency volumes, whose parameters are fit by back-propagation computed from a binary cross entropy (BCE) loss over downsampled versions of the saliency volumes. Sampling strategies over these volumes are used to generate scanpaths over the 360-degree images. Our experiments show the advantages of using saliency volumes, and how they can be used for related tasks. Our source code and trained models available at https://github.com/massens/saliency-360salient-2017.

READ FULL TEXT

page 3

page 6

page 7

research
01/04/2017

SalGAN: Visual Saliency Prediction with Generative Adversarial Networks

We introduce SalGAN, a deep convolutional neural network for visual sali...
research
08/28/2018

Temporal Saliency Adaptation in Egocentric Videos

This work adapts a deep neural model for image saliency prediction to th...
research
03/10/2020

Tidying Deep Saliency Prediction Architectures

Learning computational models for visual attention (saliency estimation)...
research
12/20/2018

SMILER: Saliency Model Implementation Library for Experimental Research

The Saliency Model Implementation Library for Experimental Research (SMI...
research
07/28/2023

SAFE: Saliency-Aware Counterfactual Explanations for DNN-based Automated Driving Systems

A CF explainer identifies the minimum modifications in the input that wo...
research
06/25/2021

Energy-Based Generative Cooperative Saliency Prediction

Conventional saliency prediction models typically learn a deterministic ...
research
03/11/2020

Unified Image and Video Saliency Modeling

Visual saliency modeling for images and videos is treated as two indepen...

Please sign up or login with your details

Forgot password? Click here to reset