Authors
Jialun Pei, Tao Jiang, He Tang, Nian Liu, Yueming Jin, Deng-Ping Fan*, Pheng-Ann Heng
Publication date
2024
Journal
IEEE Transactions on Image Processing (TIP)
Description
In this study, we propose a novel approach for RGB-D salient instance segmentation using a dual-branch cross-modal feature calibration architecture called CalibNet . Our method simultaneously calibrates depth and RGB features in the kernel and mask branches to generate instance-aware kernels and mask features. CalibNet consists of three simple modules, a dynamic interactive kernel (DIK) and a weight-sharing fusion (WSF), which work together to generate effective instance-aware kernels and integrate cross-modal features. To improve the quality of depth features, we incorporate a depth similarity assessment (DSA) module prior to DIK and WSF. In addition, we further contribute a new DSIS dataset, which contains 1,940 images with elaborate instance-level annotations. Extensive experiments on three challenging benchmarks show that CalibNet yields a promising result, i.e ., 58.0% AP with 320×480 …
Total citations
2023202414
Scholar articles
J Pei, T Jiang, H Tang, N Liu, Y Jin, DP Fan, PA Heng - IEEE Transactions on Image Processing, 2024