Multi-Scale Estimation for Omni-Directional Saliency Maps Using Learnable Equator Bias
Takao Yamanaka, Tatsuya Suzuki, Taiki Nobutsune, Chenjunlin Wu

TL;DR
This paper introduces a multi-scale, learnable equator bias-based model for estimating saliency maps in omni-directional images, improving accuracy by integrating multi-angle views and leveraging pretrained 2D saliency models.
Contribution
It proposes a novel multi-scale estimation framework with a learnable equator bias layer, enhancing omni-directional saliency map accuracy using pretrained 2D models and pixel-wise attention.
Findings
Improved saliency map accuracy on omni-directional datasets.
Effective integration of multi-angle views via attention weights.
Enhanced detection of objects of various sizes.
Abstract
Omni-directional images have been used in wide range of applications. For the applications, it would be useful to estimate saliency maps representing probability distributions of gazing points with a head-mounted display, to detect important regions in the omni-directional images. This paper proposes a novel saliency-map estimation model for the omni-directional images by extracting overlapping 2-dimensional (2D) plane images from omni-directional images at various directions and angles of view. While 2D saliency maps tend to have high probability at the center of images (center bias), the high-probability region appears at horizontal directions in omni-directional saliency maps when a head-mounted display is used (equator bias). Therefore, the 2D saliency model with a center-bias layer was fine-tuned with an omni-directional dataset by replacing the center-bias layer to an equator-bias…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Gaze Tracking and Assistive Technology · Visual perception and processing mechanisms
