Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Rapid Salient Object Detection with Difference Convolutional Neural Networks

About

This paper addresses the challenge of deploying salient object detection (SOD) on resource-constrained devices with real-time performance. While recent advances in deep neural networks have improved SOD, existing top-leading models are computationally expensive. We propose an efficient network design that combines traditional wisdom on SOD and the representation power of modern CNNs. Like biologically-inspired classical SOD methods relying on computing contrast cues to determine saliency of image regions, our model leverages Pixel Difference Convolutions (PDCs) to encode the feature contrasts. Differently, PDCs are incorporated in a CNN architecture so that the valuable contrast cues are extracted from rich feature maps. For efficiency, we introduce a difference convolution reparameterization (DCR) strategy that embeds PDCs into standard convolutions, eliminating computation and parameters at inference. Additionally, we introduce SpatioTemporal Difference Convolution (STDC) for video SOD, enhancing the standard 3D convolution with spatiotemporal contrast capture. Our models, SDNet for image SOD and STDNet for video SOD, achieve significant improvements in efficiency-accuracy trade-offs. On a Jetson Orin device, our models with $<$ 1M parameters operate at 46 FPS and 150 FPS on streamed images and videos, surpassing the second-best lightweight models in our experiments by more than $2\times$ and $3\times$ in speed with superior accuracy. Code will be available at https://github.com/hellozhuo/stdnet.git.

Zhuo Su, Li Liu, Matthias M\"uller, Jiehua Zhang, Diana Wofk, Ming-Ming Cheng, Matti Pietik\"ainen• 2025

Related benchmarks

TaskDatasetResultRank
RGB-D Video Salient Object DetectionViDSOD-100
S_alpha69.8
14
RGB-D Video Salient Object DetectionDVisal
S_alpha64.6
14
RGB-D Video Salient Object DetectionRDVS
S_alpha59.5
14
Showing 3 of 3 rows

Other info

Follow for update