3 results match your criteria: "National Defense University of Science and Technology[Affiliation]"

Self-distillation methods utilize Kullback-Leibler divergence (KL) loss to transfer the knowledge from the network itself, which can improve the model performance without increasing computational resources and complexity. However, when applied to salient object detection (SOD), it is difficult to effectively transfer knowledge using KL. In order to improve SOD model performance without increasing computational resources, a non-negative feedback self-distillation method is proposed.

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[Establishment and test results of an artificial intelligence burn depth recognition model based on convolutional neural network].

Zhonghua Shao Shang Za Zhi

November 2020

Department of Burns and Plastic Surgery, Xiangya Hospital, Central South University, Changsha 410008, China.

To establish an artificial intelligence burn depth recognition model based on convolutional neural network, and to test its effectiveness. In this evaluation study on diagnostic test, 484 wound photos of 221 burn patients in Xiangya Hospital of Central South University (hereinafter referred to as the author's unit) from January 2010 to December 2019 taken within 48 hours after injury which met the inclusion criteria were collected and numbered randomly. The target wounds were delineated by image viewing software, and the burn depth was judged by 3 attending doctors with more than 5-year professional experience in Department of Burns and Plastic Surgery of the author's unit.

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Introduction: Early judgment of the depth of burns is very important for the accurate formulation of treatment plans. In medical imaging the application of Artificial Intelligence has the potential for serving as a very experienced assistant to improve early clinical diagnosis. Due to lack of large volume of a particular feature, there has been almost no progress in burn field.

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