Facial emotion recognition(FER)has become a focal point of research due to its widespread applications,ranging from human-computer interaction to affective computing.While traditional FER techniques have relied on han...Facial emotion recognition(FER)has become a focal point of research due to its widespread applications,ranging from human-computer interaction to affective computing.While traditional FER techniques have relied on handcrafted features and classification models trained on image or video datasets,recent strides in artificial intelligence and deep learning(DL)have ushered in more sophisticated approaches.The research aims to develop a FER system using a Faster Region Convolutional Neural Network(FRCNN)and design a specialized FRCNN architecture tailored for facial emotion recognition,leveraging its ability to capture spatial hierarchies within localized regions of facial features.The proposed work enhances the accuracy and efficiency of facial emotion recognition.The proposed work comprises twomajor key components:Inception V3-based feature extraction and FRCNN-based emotion categorization.Extensive experimentation on Kaggle datasets validates the effectiveness of the proposed strategy,showcasing the FRCNN approach’s resilience and accuracy in identifying and categorizing facial expressions.The model’s overall performance metrics are compelling,with an accuracy of 98.4%,precision of 97.2%,and recall of 96.31%.This work introduces a perceptive deep learning-based FER method,contributing to the evolving landscape of emotion recognition technologies.The high accuracy and resilience demonstrated by the FRCNN approach underscore its potential for real-world applications.This research advances the field of FER and presents a compelling case for the practicality and efficacy of deep learning models in automating the understanding of facial emotions.展开更多
Aim: To evaluate the safety and efficacy of needle revision with subconjunctival injection of 5-Fluorouracil with late failure of trabeculectomy on the slit-lamp bio microscope. Methods: 31 eyes of 31 patients were in...Aim: To evaluate the safety and efficacy of needle revision with subconjunctival injection of 5-Fluorouracil with late failure of trabeculectomy on the slit-lamp bio microscope. Methods: 31 eyes of 31 patients were included in the study. Eyes with encapsulated blebs were excluded. After informed consent the procedure was done with an appropriate gauge needle and 5mg of展开更多
Aim: To study the prevalence of filtration-bleb transconjunctival oozing in the first postoperative year after various glaucoma procedures. Methods: Cross-sectional, single-point examination of all filtration blebs in...Aim: To study the prevalence of filtration-bleb transconjunctival oozing in the first postoperative year after various glaucoma procedures. Methods: Cross-sectional, single-point examination of all filtration blebs in eyes which had glaucoma surgery in the last year. Eyes were examined 3-12 months after surgery and were grouped into non-penetrating (NPGS) and penetrating (PGS)展开更多
文摘Facial emotion recognition(FER)has become a focal point of research due to its widespread applications,ranging from human-computer interaction to affective computing.While traditional FER techniques have relied on handcrafted features and classification models trained on image or video datasets,recent strides in artificial intelligence and deep learning(DL)have ushered in more sophisticated approaches.The research aims to develop a FER system using a Faster Region Convolutional Neural Network(FRCNN)and design a specialized FRCNN architecture tailored for facial emotion recognition,leveraging its ability to capture spatial hierarchies within localized regions of facial features.The proposed work enhances the accuracy and efficiency of facial emotion recognition.The proposed work comprises twomajor key components:Inception V3-based feature extraction and FRCNN-based emotion categorization.Extensive experimentation on Kaggle datasets validates the effectiveness of the proposed strategy,showcasing the FRCNN approach’s resilience and accuracy in identifying and categorizing facial expressions.The model’s overall performance metrics are compelling,with an accuracy of 98.4%,precision of 97.2%,and recall of 96.31%.This work introduces a perceptive deep learning-based FER method,contributing to the evolving landscape of emotion recognition technologies.The high accuracy and resilience demonstrated by the FRCNN approach underscore its potential for real-world applications.This research advances the field of FER and presents a compelling case for the practicality and efficacy of deep learning models in automating the understanding of facial emotions.
文摘Aim: To evaluate the safety and efficacy of needle revision with subconjunctival injection of 5-Fluorouracil with late failure of trabeculectomy on the slit-lamp bio microscope. Methods: 31 eyes of 31 patients were included in the study. Eyes with encapsulated blebs were excluded. After informed consent the procedure was done with an appropriate gauge needle and 5mg of
文摘Aim: To study the prevalence of filtration-bleb transconjunctival oozing in the first postoperative year after various glaucoma procedures. Methods: Cross-sectional, single-point examination of all filtration blebs in eyes which had glaucoma surgery in the last year. Eyes were examined 3-12 months after surgery and were grouped into non-penetrating (NPGS) and penetrating (PGS)