A Hybrid Multilayer Extreme Learning Machine for Image Classification with an Application to Quadcopters
Rolando A.Hernandez-Hernandez, Adrian Rubio-Solis

TL;DR
This paper introduces a hybrid multilayer extreme learning machine (HML-ELM) combining autoencoders and fuzzy logic for improved image classification, particularly applied to UAV object transport tasks, demonstrating superior efficiency over existing methods.
Contribution
The paper proposes a novel hierarchical HML-ELM framework integrating ELM-AE and Interval Type-2 fuzzy logic for active image classification, with application to UAV object transport.
Findings
HML-ELM outperforms ML-ELM, ML-FELM, and ELM in classification accuracy.
Effective feature extraction via stacked ELM-AEs enhances high-level representations.
UAV experiments validate the method's practical applicability and efficiency.
Abstract
Multilayer Extreme Learning Machine (ML-ELM) and its variants have proven to be an effective technique for the classification of different natural signals such as audio, video, acoustic and images. In this paper, a Hybrid Multilayer Extreme Learning Machine (HML-ELM) that is based on ELM-based autoencoder (ELM-AE) and an Interval Type-2 fuzzy Logic theory is suggested for active image classification and applied to Unmanned Aerial Vehicles (UAVs). The proposed methodology is a hierarchical ELM learning framework that consists of two main phases: 1) self-taught feature extraction and 2) supervised feature classification. First, unsupervised multilayer feature encoding is achieved by stacking a number of ELM-AEs, in which input data is projected into a number of high-level representations. At the second phase, the final features are classified using a novel Simplified Interval Type-2 Fuzzy…
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