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Dense Feature Aggregation and Pruning for RGBT Tracking

About

How to perform effective information fusion of different modalities is a core factor in boosting the performance of RGBT tracking. This paper presents a novel deep fusion algorithm based on the representations from an end-to-end trained convolutional neural network. To deploy the complementarity of features of all layers, we propose a recursive strategy to densely aggregate these features that yield robust representations of target objects in each modality. In different modalities, we propose to prune the densely aggregated features of all modalities in a collaborative way. In a specific, we employ the operations of global average pooling and weighted random selection to perform channel scoring and selection, which could remove redundant and noisy features to achieve more robust feature representation. Experimental results on two RGBT tracking benchmark datasets suggest that our tracker achieves clear state-of-the-art against other RGB and RGBT tracking methods.

Yabin Zhu, Chenglong Li, Bin Luo, Jin Tang, Xiao Wang• 2019

Related benchmarks

TaskDatasetResultRank
RGB-T TrackingLasHeR (test)
PR43.1
244
RGB-T TrackingRGBT234 (test)
Precision Rate76.6
189
RGB-T TrackingGTOT
PR88.2
114
RGB-T TrackingRGBT234
Precision76.6
98
RGBT TrackingLasHeR
PR43.1
55
RGBT TrackingRGBT 234
Precision Rate76.6
53
RGBT TrackingLasHeR
PR43.1
41
RGB+Thermal TrackingLasHeR 17
AUC31.4
14
RGBT TrackingRGBT PO 234
Precision Rate82.1
9
RGBT TrackingRGBT LI 234
PR77.5
9
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