Action Spotting in Soccer broadcast Untrimmed videos
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The task of spotting consists of finding the anchor time that identifies an event in a video and then classify the event to appropriate class.
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The task of spotting consists of finding the anchor time that identifies an event in a video and then classify the event to appropriate class.
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We aim to explore different model compression techniques in this project.
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In this project, we plan to implement the transition based and graph based dependency parser using neural network approaches for feature representation to extract the syntactic interpretations.
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In this project we aim to implement variational autoencoder and generative adversarial network on MNIST dataset.
Published in Cadence TeqFest 2019, 2019
In this poster we put forward a job scheduling algorithm with the goal of the minimum completion time, maximum load balancing degree using an improved deferential algorithm in cloud computing. Our proposed solution is to use machine learning (ML) techniques, especially supervised learning techniques to learn and predict the compile time of a design at the parser stage of the palladium frontend compiler.
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Published in IEEE International Conference on Cloud Computing, Data Science & Engineering(Confluence), 2019
In this paper, we compare the classification models of Data mining that can predict the fraudulent firm based on current and past risk factors. Further, we apply the ensemble techniques to improve the models and finally compare the models based on accuracy and compute complexity. The dataset collected is multivariate having 18 attributes that have been considered as risk factors.
Recommended citation: H. Monish and A. C. Pandey, "A Comparative Assessment of Data Mining Algorithms to Predict Fraudulent Firms," 2020 10th International Conference on Cloud Computing, Data Science & Engineering (Confluence), 2020, pp. 117-122, doi: 10.1109/Confluence47617.2020.9057968. https://ieeexplore.ieee.org/document/9057968