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5 months ago

TRACER: Extreme Attention Guided Salient Object Tracing Network

Min Seok Lee; Wooseok Shin; Sung Won Han

TRACER: Extreme Attention Guided Salient Object Tracing Network

Abstract

Existing studies on salient object detection (SOD) focus on extracting distinct objects with edge information and aggregating multi-level features to improve SOD performance. To achieve satisfactory performance, the methods employ refined edge information and low multi-level discrepancy. However, both performance gain and computational efficiency cannot be attained, which has motivated us to study the inefficiencies in existing encoder-decoder structures to avoid this trade-off. We propose TRACER, which detects salient objects with explicit edges by incorporating attention guided tracing modules. We employ a masked edge attention module at the end of the first encoder using a fast Fourier transform to propagate the refined edge information to the downstream feature extraction. In the multi-level aggregation phase, the union attention module identifies the complementary channel and important spatial information. To improve the decoder performance and computational efficiency, we minimize the decoder block usage with object attention module. This module extracts undetected objects and edge information from refined channels and spatial representations. Subsequently, we propose an adaptive pixel intensity loss function to deal with the relatively important pixels unlike conventional loss functions which treat all pixels equally. A comparison with 13 existing methods reveals that TRACER achieves state-of-the-art performance on five benchmark datasets. We have released TRACER at https://github.com/Karel911/TRACER.

Code Repositories

Karel911/TRACER
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
salient-object-detection-on-dut-omronTRACER-TE7
F-measure: 0.849
MAE: 0.045
S-Measure: 0.855
mean F-Measure: 0.798
salient-object-detection-on-dut-omronTRACER-(ResNet50)
MAE: 0.050
salient-object-detection-on-duts-teTRACER-TE7
MAE: 0.022
S-Measure: 0.919
max F-measure: 0.932
mean F-Measure: 0.904
salient-object-detection-on-duts-teTRACER-(ResNet50)
MAE: 0.035
salient-object-detection-on-ecssdTRACER-TE7
F-measure: 0.961
MAE: 0.026
S-Measure: 0.935
mean F-Measure: 0.940
salient-object-detection-on-ecssdTRACER-(ResNet50)
MAE: 0.033
salient-object-detection-on-hku-isTRACER-(ResNet50)
MAE: 0.028
salient-object-detection-on-hku-isTRACER-TE7
F-measure: 0.954
MAE: 0.020
S-Measure: 0.932
mean F-Measure: 0.934
salient-object-detection-on-pascal-sTRACER-TE7
F-measure: 0.909
MAE: 0.047
S-Measure: 0.882
mean F-Measure: 0.874

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