Patents Assigned to GYNETWORKS CO., LTD.
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Publication number: 20230297840Abstract: Disclosed herein is a learning method of a neural network model for flame determination. The learning method of a neural network includes generating a learning image including a fake image generated by combining a real fire image and an arbitrary flame image with a background image; inputting the learning image to a first neural network model and outputting a determination result for whether a flame is present; and updating a weight in a layer extracting features of the learning image from the first neural network model using the determination result. According to the present invention, data of various fire situations may be secured, a performance of the neural network model that determines an occurrence of the fire through the secured data may be increased, and a quality of data for learning may be increased to allow the neural network model itself to predict various situations of fires.Type: ApplicationFiled: May 25, 2023Publication date: September 21, 2023Applicant: GYNETWORKS CO., LTD.Inventor: Seung On Bang
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Patent number: 11687787Abstract: Disclosed herein is a learning method of a neural network model for flame determination. The learning method of a neural network includes generating a learning image including a fake image generated by combining a real fire image and an arbitrary flame image with a background image; inputting the learning image to a first neural network model and outputting a determination result for whether a flame is present; and updating a weight in a layer extracting features of the learning image from the first neural network model using the determination result. According to the present invention, data of various fire situations may be secured, a performance of the neural network model that determines an occurrence of the fire through the secured data may be increased, and a quality of data for learning may be increased to allow the neural network model itself to predict various situations of fires.Type: GrantFiled: June 24, 2021Date of Patent: June 27, 2023Assignee: GYNETWORKS CO., LTD.Inventor: Seung On Bang
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Publication number: 20220245818Abstract: The present invention relates to a neural network for object segmentation. A method for object segmentation using a trained neural network according to an embodiment of the present invention includes receiving a segmentation target image, splitting the target image into unit images having a predetermined size, outputting a unit activation map for the split unit image as a first segmentation result by using the neural network, merging the unit activation map, and outputting a second segmentation result according to the merged unit activation map, in which the neural network is trained by mutually using the entire activation map for the target image and the merged activation map. According to the present invention, it is possible to generate a more accurate object segmentation result, and generate a label using the segmentation result and use the generated label for training of a neural network.Type: ApplicationFiled: January 26, 2022Publication date: August 4, 2022Applicant: GYNETWORKS CO., LTD.Inventor: Seung On Bang
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Publication number: 20220207363Abstract: The present invention relates to a method for training a neural network for object detection. The method includes receiving a detection target image, splitting the detection target image into unit images having a predetermined size, defining an output of the neural network for the split unit images as a first label value, generating a first deformed image by deforming the unit image according to a first rule, and training the neural network by using an output of the neural network for the first deformed image and a loss of the first label value. According to the present invention, it is possible to efficiently train a neural network for detecting an object in a large screen.Type: ApplicationFiled: December 29, 2021Publication date: June 30, 2022Applicant: GYNETWORKS CO., LTD.Inventors: Gang Seok Son, Seung On Bang
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Publication number: 20210319318Abstract: Disclosed herein is a learning method of a neural network model for flame determination. The learning method of a neural network includes generating a learning image including a fake image generated by combining a real fire image and an arbitrary flame image with a background image; inputting the learning image to a first neural network model and outputting a determination result for whether a flame is present; and updating a weight in a layer extracting features of the learning image from the first neural network model using the determination result. According to the present invention, data of various fire situations may be secured, a performance of the neural network model that determines an occurrence of the fire through the secured data may be increased, and a quality of data for learning may be increased to allow the neural network model itself to predict various situations of fires.Type: ApplicationFiled: June 24, 2021Publication date: October 14, 2021Applicant: GYNETWORKS CO., LTD.Inventor: Seung On Bang
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Patent number: 11074501Abstract: Disclosed herein is a learning method of a neural network model for flame determination. The learning method of a neural network includes generating a learning image including a fake image generated by combining a real fire image and an arbitrary flame image with a background image; inputting the learning image to a first neural network model and outputting a determination result for whether a flame is present; and updating a weight in a layer extracting features of the learning image from the first neural network model using the determination result. According to the present invention, data of various fire situations may be secured, a performance of the neural network model that determines an occurrence of the fire through the secured data may be increased, and a quality of data for learning may be increased to allow the neural network model itself to predict various situations of fires.Type: GrantFiled: October 25, 2019Date of Patent: July 27, 2021Assignee: GYNETWORKS CO., LTD.Inventor: Seung On Bang
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Publication number: 20210019617Abstract: Disclosed herein is a learning method of a neural network model for flame determination. The learning method of a neural network includes generating a learning image including a fake image generated by combining a real fire image and an arbitrary flame image with a background image; inputting the learning image to a first neural network model and outputting a determination result for whether a flame is present; and updating a weight in a layer extracting features of the learning image from the first neural network model using the determination result. According to the present invention, data of various fire situations may be secured, a performance of the neural network model that determines an occurrence of the fire through the secured data may be increased, and a quality of data for learning may be increased to allow the neural network model itself to predict various situations of fires.Type: ApplicationFiled: October 25, 2019Publication date: January 21, 2021Applicant: GYNETWORKS CO., LTD.Inventor: Seung On Bang