4.6 Article

Scarce data driven deep learning of drones via generalized data distribution space

期刊

NEURAL COMPUTING & APPLICATIONS
卷 35, 期 20, 页码 15095-15108

出版社

SPRINGER LONDON LTD
DOI: 10.1007/s00521-023-08522-z

关键词

Air transport; Drones; Airport safety; Discriminative neural networks; Feature distribution; Training data collection

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Increased drone proliferation poses new threats to airports and national infrastructures, with estimated economic damages of millions of dollars per day. Training accurate drone detection algorithms under scarce data is challenging. We propose a method using GAN and TDA to understand the general data distribution and acquire under-represented data, achieving a significant improvement in accuracy compared to existing methods.
Increased drone proliferation in civilian and professional settings has created new threat vectors for airports and national infrastructures. The economic damage for a single major airport from drone incursions is estimated to be millions per day. Due to the lack of balanced representation in drone data, training accurate deep learning drone detection algorithms under scarce data is an open challenge. Existing methods largely rely on collecting diverse and comprehensive experimental drone footage data, artificially induced data augmentation, transfer and meta-learning, as well as physics-informed learning. However, these methods cannot guarantee capturing diverse drone designs and fully understanding the deep feature space of drones. Here, we show how understanding the general distribution of the drone data via a generative adversarial network (GAN), and explaining the under-learned data features using topological data analysis (TDA) can allow us to acquire under-represented data to achieve rapid and more accurate learning. We demonstrate our results on a drone image dataset, which contains both real drone images as well as simulated images from computer-aided design. When compared to random, tag-informed and expert-informed data collections (discriminator accuracy of 94.67%, 94.53% and 91.07%, respectively, after 200 epochs), our proposed GAN-TDA-informed data collection method offers a significant 4% improvement (99.42% after 200 epochs). We believe that this approach of exploiting general data distribution knowledge from neural networks can be applied to a wide range of scarce data open challenges.

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