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Deep neural networks, also referred to as DNNs, have experienced great progress in processing a wide range of data types, including pictures, time series, speech, audio, and video, thanks to their amazing ability to infer representations from data. Within the discipline of remote sensing, surveys and studies of the literature devoted to DNN applications are being conducted in an attempt to compile the massive amount of data produced in subfields. Applications using unmanned aircraft are a common theme in aerial sensing research. Nevertheless, there hasn't been a thorough literature study that addresses the issues of "deep learning" and "unmanned aerial vehicles remotely sensing" as of yet. In order to close this gap, this work proposes a novel approach for underwater drone vehicle networks that makes use of deep learning (DL) techniques for obtaining and categorising features in picture analysis. Pictures taken by unmanned aerial vehicles (UAVs) outfitted with a This module undergo a series of pre-processing procedures, such as noise reduction, smoothing, and normalisation. The modified pictures are then subjected to feature extraction using convolutional neural networks based on multilayer extreme learning. Radial basis functions networks based on recursive elimination are then used to classify the deep characteristics that were retrieved. The performance of the suggested technique is assessed by experimental analysis using several UAV image datasets, with a focus on precision, recall, precision, and accuracy The F measure, root-median-square error (RMSE), and average precision of the mean (MAP).
Agrawal et al. (Fri,) studied this question.