2018 IEEE Latin American Conference on Computational Intelligence (LA-CCI) 2018
DOI: 10.1109/la-cci.2018.8625210
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Pedestrian Detection Using R-CNN Object Detector

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Cited by 22 publications
(8 citation statements)
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“…Since then, much effort has been made on improving the performance of pedestrian detection (Zhang et al, 2017;Pang et al, 2019;, and some others (Tian et al, 2015;Zhou and Yuan, 2018;Pang et al, 2019;Xie et al, 2020) target at handling occlusion. The work of Tian et al (2015), Masita et al (2018), Wei and Kehtarnavaz (2019), and Zhang et al (2020) proposed to detect pedestrians by addressing the fine-tuning problem, while Jiang et al (2016) and focus on speed up two-stage pedestrian detection algorithm. Since Fast R-CNN and Faster R-CNN have limited success for detecting small pedestrians due to the low resolution of their convolutional features (Zhang et al, 2016), Hu et al (2017) introduced semantic labels to improve pedestrians detections.…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Since then, much effort has been made on improving the performance of pedestrian detection (Zhang et al, 2017;Pang et al, 2019;, and some others (Tian et al, 2015;Zhou and Yuan, 2018;Pang et al, 2019;Xie et al, 2020) target at handling occlusion. The work of Tian et al (2015), Masita et al (2018), Wei and Kehtarnavaz (2019), and Zhang et al (2020) proposed to detect pedestrians by addressing the fine-tuning problem, while Jiang et al (2016) and focus on speed up two-stage pedestrian detection algorithm. Since Fast R-CNN and Faster R-CNN have limited success for detecting small pedestrians due to the low resolution of their convolutional features (Zhang et al, 2016), Hu et al (2017) introduced semantic labels to improve pedestrians detections.…”
Section: Related Workmentioning
confidence: 99%
“…For instance, the work of Zeng et al (2014) proposes a transfer learning method for pedestrian detection that combines the ability to extract features from CNN and the similar ability to transfer features from the auto-encoder network. Masita et al (2018) use R-CNN via transfer learning to detect pedestrians. Initially, they fine-tune a pre-trained Alexnet CNN in the Penn-Fudan (170 images) and KTH Multiview Football (771 images) datasets.…”
Section: Introductionmentioning
confidence: 99%
“…Deep models for individual identification centres include learning [8], logical data learning, and handling of impediments. Forms of deep learning object identification [9] [10]can now mainly be isolated into two families: I two-stage locators, such as R-CNN [10], Fast R-CNN [11] and Faster R-CNN [12] [13] and their variations; and (ii) one-stage locators, like YOLO [12] and SSD. In two-stage locator recognition, the processed proposal is performed in steps, in the main stage, and organised into object classifications in the second stage.…”
Section: Related Workmentioning
confidence: 99%
“…Additionally, CNN’s are utilized in the field of the combination of spatial representation and time-series structure, i.e. moving object detection or video classification [Masita et.al, 2018; Li, 2017]. CNN’s provide significant performance enhancement minimizing the error rates of competing techniques in ImageNet competition 2012 [Krizhevsky et.al, 2017].…”
Section: Introductionmentioning
confidence: 99%