计算机科学
建筑
分割
人工智能
计算机体系结构
嵌入式系统
视觉艺术
艺术
作者
Tanmay Kumar Behera,Sambit Bakshi,Muhammad Attique Khan,Hussain Mobarak Albarakati
标识
DOI:10.1109/tce.2024.3367531
摘要
Smart UAVs have been developed under the consumer Internet of Drone Things (CIoDTs) framework to improve the quality of service (QoS) for several commercial and consumer applications. Artificial intelligence (AI)-inspired algorithms are employed here to make these remote sensing devices more intelligent and agile to perform the task most effectively. However, these AI-based techniques may suffer from obtaining the required feature space, leading to poor performance of the AI system. Thus, to address these intrinsic issues, this manuscript presents a lightweight multiscale convolutional neural network (MCNN), which segments the UAV-captured aerial images based on their object classes. The proposed framework is based on an encoder-decoder architecture developed using depthwise separable convolution. The encoder module here involves extracting the crucial scale-invariant features that are upsampled at the decoder stage to generate the predicted segmented images. Additionally, the proposed architecture is validated using two datasets: the prepared NITRDrone dataset and the Urban Drone Dataset (UDD). Thus, the proposed method achieves an IoU score of 0.877 and 0.802 with the NITRDrone and UDD, respectively. Thus, the proposed lightweight architecture helps enhance the efficiency of these intelligent mobile edge aerial devices for several critical consumer applications demanding real-time data processing.
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