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Low-resolution pedestrian detection method, system and storage medium combining resnet and senet

A low-resolution, pedestrian detection technology, applied in the field of image processing, can solve the problems affecting low-resolution pedestrian detection, the effectiveness cannot be guaranteed, etc., to achieve the effect of enhancing semantic distinction, enhancing feature extraction ability, and enhancing effective features

Active Publication Date: 2020-07-14
广州广电银通金融电子科技有限公司 +1
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Problems solved by technology

[0013] The SSD algorithm directly uses the features extracted by the shallow network for classification and regression to detect low-resolution pedestrians. Since the effective features contained in low-resolution pedestrians are very limited, the features extracted by the shallow network may be interfered by various noises. This affects the detection of low-resolution pedestrians, so the effectiveness of the features extracted by the shallow network of the SSD algorithm cannot be guaranteed

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  • Low-resolution pedestrian detection method, system and storage medium combining resnet and senet
  • Low-resolution pedestrian detection method, system and storage medium combining resnet and senet
  • Low-resolution pedestrian detection method, system and storage medium combining resnet and senet

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Embodiment

[0067] Such as figure 1 As shown, the method of the present invention replaces the built-in basic network from VGG16 to ResNet101 on the basis of the SSD algorithm, and adds a shallow feature reconstruction layer and a shallow feature enhancement layer at the same time, so that the method of the present invention can detect low-resolution pedestrians Capabilities are improved.

[0068] Such as figure 2 , when the present invention reconstructs the features of the shallow network, the features of the deep network are deconvoluted to make it the same size as the feature map of the shallow network, and then the two feature maps are superimposed to obtain the reconstructed feature picture. The present invention first deconvolutes res5c_relu / conv1_2 to make it the same size as res5c, then performs convolution and activation with res5c respectively and then superimposes them together, and finally performs the same operation on the superimposed layer and res3b3, and converts the f...

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Abstract

The invention relates to image processing technology, in particular to a low-resolution pedestrian detection method, system and storage medium. The method of the present invention includes a training process and a testing process. The training process first determines the training set and the parameters of the training process; then inputs pictures in sequence according to the batch size, extracts the multi-scale features of the training pictures, and reconstructs and enhances the shallow features. Form a new multi-scale detection framework; finally perform frame classification and position regression, calculate training loss and backpropagation, and update weight parameters. The test process first determines the test set, uses the model obtained during the training process as the test model of the algorithm, sequentially inputs test pictures in small batches, extracts multi-scale features, reconstructs and enhances shallow features, and then classifies and positions frames return. The present invention uses a deep learning network to reconstruct shallow features, and at the same time improves the effectiveness of shallow features, so as to enhance the ability to detect low-resolution pedestrians.

Description

technical field [0001] The invention relates to image processing technology, in particular to a low-resolution pedestrian detection method, system and storage medium. Background technique [0002] Pedestrian detection is to judge whether there are pedestrians in the target image or video, and if so, it is necessary to accurately locate the detected pedestrians. As a very challenging research hotspot in computer vision, pedestrian detection has important applications in the fields of intelligent transportation, video surveillance, and robot development. Therefore, it has important research significance and great application value to study high-performance pedestrian detection system. [0003] In recent years, the popularity of deep learning has driven the development of pedestrian detection technology. Pedestrian detection has gradually shifted from traditional methods to deep learning methods. Deep learning methods have made great breakthroughs in detection speed and real-t...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/00G06K9/46G06K9/62G06N3/04G06N3/08
CPCG06N3/084G06V20/52G06V10/464G06N3/045G06F18/213
Inventor 赵清利梁添才金晓峰徐天适
Owner 广州广电银通金融电子科技有限公司
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