Multi-modal feature fusion and saliency reasoning are two core sub-tasks of RGB-D salient object detection. However, most existing models employ linear fusion strategies (e.g., concatenation) for multi-modal feature fusion and use a simple coarse-to-fine structure for saliency reasoning. Despite their simpleness, they can neither fully capture the cross-modal complementary information nor exploit the multi-level complementary information among the cross-modal features at different levels. To address these issues, a novel RGB-D salient object detection model is presented, where we pay special attention to the aforementioned two sub-tasks. Concretely, a multi-modal feature interaction module is first presented to explore more interactions bet...
Numerous efforts have been made to design various low-level saliency cues for RGBD saliency detectio...
International audienceRecent RGBD-based models for saliency detection have attracted research attent...
Visual saliency prediction for RGB-D images is more challenging than that for their RGB counterparts...
RGB-D salient object detection is one of the basic tasks in computer vision. Most existing models fo...
While many RGB-based saliency detection algorithms have recently shown the capability of segmenting ...
Most existing RGB-D salient detection models pay more attention to the quality of the depth images, ...
RGB-induced salient object detection has recently witnessed substantial progress, which is attribute...
Focusing on the issue of how to effectively capture and utilize cross-modality information in RGB-D ...
International audienceEfficiently exploiting multi-modal inputs for accurate RGB-D saliency detectio...
RGB-D salient object detection (SOD) aims at locating the most eye-catching object in visual input b...
RGB-T saliency detection has emerged as an important computer vision task, identifying conspicuous o...
This article proposes an innovative RGBD saliency model, that is, attention-guided feature integrati...
International audienceRGB-D saliency detection aims to fuse multi-modal cues to accurately localize ...
Abstract The effective integration of RGB and depth map features to improve the performance of RGB‐D...
RGB-D saliency object detection (SOD) is an important pre-processing operation for various computer ...
Numerous efforts have been made to design various low-level saliency cues for RGBD saliency detectio...
International audienceRecent RGBD-based models for saliency detection have attracted research attent...
Visual saliency prediction for RGB-D images is more challenging than that for their RGB counterparts...
RGB-D salient object detection is one of the basic tasks in computer vision. Most existing models fo...
While many RGB-based saliency detection algorithms have recently shown the capability of segmenting ...
Most existing RGB-D salient detection models pay more attention to the quality of the depth images, ...
RGB-induced salient object detection has recently witnessed substantial progress, which is attribute...
Focusing on the issue of how to effectively capture and utilize cross-modality information in RGB-D ...
International audienceEfficiently exploiting multi-modal inputs for accurate RGB-D saliency detectio...
RGB-D salient object detection (SOD) aims at locating the most eye-catching object in visual input b...
RGB-T saliency detection has emerged as an important computer vision task, identifying conspicuous o...
This article proposes an innovative RGBD saliency model, that is, attention-guided feature integrati...
International audienceRGB-D saliency detection aims to fuse multi-modal cues to accurately localize ...
Abstract The effective integration of RGB and depth map features to improve the performance of RGB‐D...
RGB-D saliency object detection (SOD) is an important pre-processing operation for various computer ...
Numerous efforts have been made to design various low-level saliency cues for RGBD saliency detectio...
International audienceRecent RGBD-based models for saliency detection have attracted research attent...
Visual saliency prediction for RGB-D images is more challenging than that for their RGB counterparts...