Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Multispectral Deep Neural Networks for Pedestrian Detection

About

Multispectral pedestrian detection is essential for around-the-clock applications, e.g., surveillance and autonomous driving. We deeply analyze Faster R-CNN for multispectral pedestrian detection task and then model it into a convolutional network (ConvNet) fusion problem. Further, we discover that ConvNet-based pedestrian detectors trained by color or thermal images separately provide complementary information in discriminating human instances. Thus there is a large potential to improve pedestrian detection by using color and thermal images in DNNs simultaneously. We carefully design four ConvNet fusion architectures that integrate two-branch ConvNets on different DNNs stages, all of which yield better performance compared with the baseline detector. Our experimental results on KAIST pedestrian benchmark show that the Halfway Fusion model that performs fusion on the middle-level convolutional features outperforms the baseline method by 11% and yields a missing rate 3.5% lower than the other proposed architectures.

Jingjing Liu, Shaoting Zhang, Shu Wang, Dimitris N. Metaxas• 2016

Related benchmarks

TaskDatasetResultRank
Object DetectionFLIR (test)
mAP500.715
83
Object DetectionDroneVehicle (test)
mAP5070
61
Multispectral Pedestrian DetectionKAIST (test)
Overall Score83.15
39
Object DetectionLLVIP (test)
mAP5091.4
38
Pedestrian DetectionKAIST (test)
MR (Near)8.13
22
Pedestrian DetectionLLVIP (test)
mAP@5091.4
20
Oriented Object DetectionDroneVehicle (test)
AP (Car)90.1
19
Vehicle DetectionDroneVehicle (test)
AP (car)89.85
15
Pedestrian DetectionKAIST multispectral pedestrian dataset (All-dataset)
Detection Rate (Near)8.13
14
Object DetectionKAIST Reasonable (test)
Miss Rate25.77
11
Showing 10 of 25 rows

Other info

Follow for update