Ghalia SharihaMohammed ElmogyEman El-DaydamonyAhmed Atwan
Pedestrian detect plays a crucial role in security, intelligent surveillance, vehicles, and robotics.Occlusion handling is a challenging worry in tracking multiple people.The tracking is based on the highest accuracy object detectors.In the current paper, we proposed a framework that detects multiple pedestrians in the image, which depends on Faster Regionbased Convolutional Neural Network (R-CNN).We applied the transfer learning concept by using the VGG19 & VGG16 deep networks, which are trained before on Image-Net to extract the feature map.Relying on trained weights, to reduce the time of training, we used the transfer learning concept.The framework was tested on Penn-Fudan pedestrian database.The pedestrian detection accuracy was measured by using the area under the curve (AUC) of the receiver operating characteristic (ROC) that e is achieved 95.6%.In addition, the proposed system achieved Miss Rate (MR) equals 1.98, accuracy (ACC) equals 97.31%, and F1-score equals 93.17%.The achieved results show the promise of our proposed technique to detect multiple pedestrians in a single scene.
A. ThondralNayagiT. Nandhakumar
Xiaotong ZhaoWei LiYifang ZhangT. Aaron GulliverShuo ChangZhiyong Feng
叶国林 Ye Guolin孙韶媛 Sun Shaoyuan高凯珺 Gao Kaijun赵海涛 Zhao Haitao