A fast corner detection method for time domain vision sensor signal processing

A visual sensor and signal processing technology, applied in image data processing, instruments, computing, etc., can solve the problems of weak anti-noise performance, poor real-time performance, and large amount of calculation, and achieve high real-time performance, small amount of calculation, and simple calculation. Effect

Active Publication Date: 2019-03-12
TIANJIN NORMAL UNIVERSITY
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Problems solved by technology

These redundant information also put huge pressure on the processing and storage of the system;
[0010] (2) High latency
Due to the need for gradient calculation, the amount of calculation is large and the real-time performance is poor; an event-driven focus detection method is designed based on the principle of the FAST operator, and corner detection is performed on two concentric circles
Although this method avoids the gradient calculation, it has a large amount of calculation and weak anti-noise performance due to a large number of continuous similar pixel searches.

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  • A fast corner detection method for time domain vision sensor signal processing
  • A fast corner detection method for time domain vision sensor signal processing
  • A fast corner detection method for time domain vision sensor signal processing

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[0061] It should be noted that, in the case of no conflict, the embodiments of the present invention and the features in the embodiments can be combined with each other.

[0062] The present invention will be described in detail below with reference to the accompanying drawings and examples.

[0063] The invention discloses a fast corner point detection method for time-domain visual sensor signal processing, and provides specific implementation steps. Different from the "frame sampling" imaging method, the visual sensor is only sensitive to the light intensity changes in the shooting scene, and the visual information output by it has the characteristics of real-time, extremely low redundancy and small data volume, and the processing calculation and storage requirements are more traditional Frame sampling imaging is greatly reduced, so it is more suitable for high-speed vision applications. The present invention adopts an event-driven method, and judges whether each input even...

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Abstract

The invention discloses a fast corner detection method for signal processing of a time domain vision sensor, Different from 'frame sampling' imaging method, vision sensor is sensitive to light intensity change in shooting scene, and its output visual information has the characteristics of real-time, very low redundancy and small amount of data. Compared with the traditional frame sampling imagingmethod, the processing and storage requirements are greatly reduced, so it is more suitable for high-speed vision applications. The invention adopts an event-driven mode, and judges whether each inputevent is generated by a corner point according to the temporal-spatial correlation between the events. In the calculation process, the 'local closest event distribution map' centered on the input event is first constructed, and then the 'local closest event distribution map' is partitioned and statistically and binarized. According to the obtained partition binary representation, the table-lookupmethod is used to determine whether the input event is generated by the corner point or not. In addition to corner detection, this method can simultaneously judge the direction and type of corner points, and provide more abundant feature information for further target recognition.

Description

technical field [0001] The invention belongs to the technical field of machine vision, and in particular relates to a fast corner detection method for time domain vision sensor signal processing. Background technique [0002] Among all human information sources, image information accounts for more than 80%. At present, silicon-based semiconductor image sensors (including CCD and CMOS image sensors) have completely replaced silver iodide film and become the most important photoelectric imaging device. Based on the digital images it generates, computer vision and machine vision have been used more and more widely, and have become an important part of artificial intelligence. [0003] According to the imaging principle, the currently used images are generated based on the "frame sampling" method: [0004] 1. After all pixels are reset at the same time, they start to receive light (collect photoelectric charges), and stop receiving light after reaching the set exposure time; ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/246G06T7/269
CPCG06T7/246G06T7/269
Inventor 胡燕翔
Owner TIANJIN NORMAL UNIVERSITY
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