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Highly Efficient Salient Object Detection with 100K Parameters

About

Salient object detection models often demand a considerable amount of computation cost to make precise prediction for each pixel, making them hardly applicable on low-power devices. In this paper, we aim to relieve the contradiction between computation cost and model performance by improving the network efficiency to a higher degree. We propose a flexible convolutional module, namely generalized OctConv (gOctConv), to efficiently utilize both in-stage and cross-stages multi-scale features, while reducing the representation redundancy by a novel dynamic weight decay scheme. The effective dynamic weight decay scheme stably boosts the sparsity of parameters during training, supports learnable number of channels for each scale in gOctConv, allowing 80% of parameters reduce with negligible performance drop. Utilizing gOctConv, we build an extremely light-weighted model, namely CSNet, which achieves comparable performance with about 0.2% parameters (100k) of large models on popular salient object detection benchmarks.

Shang-Hua Gao, Yong-Qiang Tan, Ming-Ming Cheng, Chengze Lu, Yunpeng Chen, Shuicheng Yan• 2020

Related benchmarks

TaskDatasetResultRank
Camouflaged Object DetectionCOD10K (test)
S-measure (S_alpha)0.778
306
Salient Object DetectionECSSD
MAE0.033
226
Camouflaged Object DetectionCOD10K
S-measure (S_alpha)0.778
217
Camouflaged Object DetectionChameleon
S-measure (S_alpha)85.6
207
Salient Object DetectionPASCAL-S
MAE0.069
196
Camouflaged Object DetectionNC4K (test)
Sm0.75
89
Salient Object DetectionHRSOD (test)
F-beta0.905
78
Camouflaged Object DetectionChameleon (test)--
67
Camouflaged Object DetectionCAMO 250 (test)
M (Mean Score)0.092
65
Salient Object DetectionDUTS
F-beta Score86.9
52
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