Anomaly Detection for Agricultural Vehicles Using Autoencoders

Esma Mujkic*, Mark P. Philipsen, Thomas B. Moeslund, Martin P. Christiansen, Ole Ravn

*Corresponding author for this work

    Research output: Contribution to journalJournal articleResearchpeer-review

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    Abstract

    The safe in-field operation of autonomous agricultural vehicles requires detecting all objects that pose a risk of collision. Current vision-based algorithms for object detection and classification are unable to detect unknown classes of objects. In this paper, the problem is posed as anomaly detection instead, where convolutional autoencoders are applied to identify any objects deviating from the normal pattern. Training an autoencoder network to reconstruct normal patterns in agricultural fields makes it possible to detect unknown objects by high reconstruction error. Basic autoencoder (AE), vector-quantized variational autoencoder (VQ-VAE), denoising autoencoder (DAE) and semisupervised autoencoder (SSAE) with a max-margin-inspired loss function are investigated and compared with a baseline object detector based on YOLOv5. Results indicate that SSAE with an area under the curve for precision/recall (PR AUC) of 0.9353 outperforms other autoencoder models and is comparable to an object detector with a PR AUC of 0.9794. Qualitative results show that SSAE is capable of detecting unknown objects, whereas the object detector is unable to do so and fails to identify known classes of objects in specific cases.

    Original languageEnglish
    Article number3608
    JournalSensors
    Volume22
    Issue number10
    Number of pages15
    ISSN1424-8220
    DOIs
    Publication statusPublished - 1 May 2022

    Keywords

    • Agricultural vehicle
    • Anomaly detection
    • Autoencoder
    • Computer vision
    • Deep learning

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