Advanced Machine Learning for Remote Sensing: Convolutional and Recurrent Neural Networks
5th lecture in the course 'Advanced Machine Learning for Remote Sensing' explaining the basics of convolutional and recurrent neural networks.
slides: https://uni-bonn.sciebo.de/s/gma1fP7qqDkr4y8
Lecturer: Ribana Roscher
Summer term 2020, University of Bonn
Видео Advanced Machine Learning for Remote Sensing: Convolutional and Recurrent Neural Networks канала Ribana Roscher
slides: https://uni-bonn.sciebo.de/s/gma1fP7qqDkr4y8
Lecturer: Ribana Roscher
Summer term 2020, University of Bonn
Видео Advanced Machine Learning for Remote Sensing: Convolutional and Recurrent Neural Networks канала Ribana Roscher
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Remote Sensing Image Analysis and Interpretation: Image analysis and interpretation basicsAdvanced Machine Learning for Remote Sensing: Train neural networksAdvanced Machine Learning for Remote Sensing: WelcomeAdvanced Machine Learning for Remote Sensing: Neural NetworksExplain it to me - Facing Remote Sensing Challenges in the Bio- and Geosciences with Explainable MLAdvanced Machine Learning for Remote Sensing: BasicsWhat Identifies a Whale by its Fluke? On the Benefit of Interpretable ML for Whale IdentificationExplainable machine learning (2022, 5th lecture): Interpret. by backward prop. + concept discoveryExplainable machine learning (2022, 4th lecture): Local model-agnostic methodsLearning with Real-World and Artificial Data for Improved Vehicle Detection in Aerial ImageryExplainable machine learning (2022, 2nd lecture): Looking into a neural networkExplainable machine learning (2022, 1st lecture): IntroductionSemCity Toulouse: A Benchmark for Building Instance Segmentation in Satellite ImagesMulti-Modal Deep Learning with Sentinel-3 Observations for the Detection of Oceanic Internal WavesAdvanced Machine Learning for Remote Sensing: Representation learningRemote Sensing Image Analysis and Interpretation: Density estimationExplainable machine learning (2022, 3rd lecture): Global model-agnostic methodsRemote Sensing Image Analysis and Interpretation: Introduction to Remote SensingRemote Sensing Image Analysis and Interpretation: Feature extraction and image segmentationRemote Sensing Image Analysis and Interpretation: Classification with Bayes' theorem