Multiview clustering has garnered attention, with many methods showing success on simple datasets such as MNIST. However, many state-of-the-art methods lack sufficient representational capability. This paper presents results of deep embedded clustering on multiview real-world aerial imaging data. Adapting previous methods to the challenges of aerial imagery, the approach introduces a ResNet-18 autoencoder backbone and data augmentation techniques to handle complex images and diverse environmental conditions. Advanced feature extraction using convolutional autoencoders captures intricate patterns and spatial relationships. By integrating multiview data, the self-supervised method enhances clustering accuracy and robustness, advancing aerial image analysis for environmental monitoring, urban planning, and first responder efforts.
Related links
Details
Title
Deep embedded multi-view Object clustering using Aerial images in the wild