Distillation of neural network models for detection and description of key points of images
Image matching and classification methods, as well as synchronous location and mapping, are widely used on embedded and mobile devices. Their most resource-intensive part is the detection and description of the key points of the images. And if the classical methods of detecting and describing key po...
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Zusammenfassung: | Image matching and classification methods, as well as synchronous location
and mapping, are widely used on embedded and mobile devices. Their most
resource-intensive part is the detection and description of the key points of
the images. And if the classical methods of detecting and describing key points
can be executed in real time on mobile devices, then for modern neural network
methods with the best quality, such use is difficult. Thus, it is important to
increase the speed of neural network models for the detection and description
of key points. The subject of research is distillation as one of the methods
for reducing neural network models. The aim of thestudy is to obtain a more
compact model of detection and description of key points, as well as a
description of the procedure for obtaining this model. A method for the
distillation of neural networks for the task of detecting and describing key
points was tested. The objective function and training parameters that provide
the best results in the framework of the study are proposed. A new data set has
been introduced for testing key point detection methods and a new quality
indicator of the allocated key points and their corresponding local features.
As a result of training in the described way, the new model, with the same
number of parameters, showed greater accuracy in comparing key points than the
original model. A new model with a significantly smaller number of parameters
shows the accuracy of point matching close to the accuracy of the original
model. |
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DOI: | 10.48550/arxiv.2006.10502 |