Object re-identification method based on densely connected convolutional network hypersphere embedding

A densely connected, convolutional network technology, applied in character and pattern recognition, instrumentation, computing, etc., can solve target re-identification errors, fast swimming, large-scale shape changes, underwater deformation target monitoring difficulties, complex imaging conditions, etc. problem to achieve the effect of mitigating the disappearance of the gradient

Active Publication Date: 2021-08-10
OCEAN UNIV OF CHINA
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Problems solved by technology

That is, the main problems existing in the prior art: (1) Due to the complex optical imaging conditions of the ocean, factors such as post-scattering of underwater imaging, turbid water, sediment, ocean currents, phytoplankton, and swinging aquatic plants will cause optical image quality to decline or The introduction of interference will cause errors in target re-identification; (2) The rapid swimming and large-scale shape changes of underwater deformable targets will also cause difficulties in the monitoring of underwater deformable targets

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  • Object re-identification method based on densely connected convolutional network hypersphere embedding
  • Object re-identification method based on densely connected convolutional network hypersphere embedding
  • Object re-identification method based on densely connected convolutional network hypersphere embedding

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Embodiment 1

[0041] Embodiment 1: Taking the dynamics of fish in the ocean underwater environment as the re-identification object.

[0042] The specific flow chart of this embodiment is as follows figure 1 shown.

[0043] In this embodiment, a section such as figure 2 As shown, the video of fish activities in the marine environment (1920*1080 pixels, 25 frames per second) captured by the marine ranch in Shandong Province is used as the video to be detected and re-identified.

[0044] The following steps should be described in detail in conjunction with the accompanying drawings and specific results, and should only be outlined steps in the summary of the invention.

[0045] Step 1. Create a data set from a large number of fish images captured in the marine ranch, and mark the positions and numbers of all fish in the images (the same fish has the same number);

[0046] Step 2: Use Mask-RCNN to detect and identify the segmentation network on the built data set. For the re-identification ...

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Abstract

The present invention provides a target re-identification method based on densely connected convolutional network hypersphere embedding. Firstly, the densely connected convolutional network DenseNet extracts the underwater deformation target features in the video sequence, which greatly reduces the disappearance of gradients, strengthens feature propagation, and supports The process of feature reuse and parameter learning, and then from the perspective of fine-grained classification, from the local integration to the global, using the group average pooling idea to refine and extract the features of underwater deformation targets at all levels, to obtain more accurate underwater deformation target feature expression capabilities, and to The hypersphere loss, that is, the angular triple loss, focuses on the inter-class differences of underwater deformation individual targets, distinguishes intra-class differences, avoids directly measuring the Euclidean distance between the encoding features of underwater deformation individual targets, and constructs a complete underwater vision system with multi-point deployment. A continuous underwater deformation individual target re-identification model. The present invention finally completes the close supervision and process tracking of the underwater deformation target individual in the short-distance multi-field observation.

Description

technical field [0001] The invention relates to an underwater deformation and moving target re-identification method based on densely connected convolutional network hypersphere embedding, and belongs to the technical fields of intelligent information processing and target detection and recognition. Background technique [0002] my country has a vast sea area and rich fishery resources, so marine monitoring is very necessary. Not only can it detect abnormal underwater targets in time and take countermeasures, but it can also improve the marine environment in time to avoid pollution to the marine environment and damage to the ecological environment. Therefore, it is of great significance to carry out long-term and effective multi-camera and multi-angle monitoring of the main resources in the marine environment, and also provides a basis for aquaculture fisheries and marine fishing industries. The behavioral analysis of underwater deformable targets provides data and informati...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/00G06K9/62
CPCG06V20/00G06V2201/07G06F18/22G06F18/214
Inventor 年睿郝宝趁张世昌李晓雨刘沙沙
Owner OCEAN UNIV OF CHINA
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