A Lightweight Object Detection and Recognition Method Based on Light Global-Local Module for Remote Sensing Images | IEEE Journals & Magazine | IEEE Xplore

A Lightweight Object Detection and Recognition Method Based on Light Global-Local Module for Remote Sensing Images


Abstract:

Lightweight object detection and recognition models are extremely crucial for in-orbit applications, which is the most critical factor for whether deep learning-based obj...Show More

Abstract:

Lightweight object detection and recognition models are extremely crucial for in-orbit applications, which is the most critical factor for whether deep learning-based object detection and recognition algorithms can be applied to remote sensing satellites for real-time or near real-time processing. Global information is extremely important for object detection and recognition of remote sensing images. However, due to the high computational cost, the existing CNN-based lightweight models over-emphasize the extraction of local information, while ignoring the global information. For this reason, we propose a lightweight object detection and recognition model lightweight global-local detection (LGLDet) based on the especially light global modeling structure. In LGLDet, a light global-local module (LGLM) is proposed to extract the global and local information. The LGLM consists of Point2Patch Non-Local (P2PNL), local branch, and skip connection. Specifically, P2PNL is proposed to reduce the computation of global long-range dependency modeling. In addition, the feature fusion part and detection head are also designed in a lightweight way. In the experiments, the proposed method can achieve optimal performance with fewer parameters and lower computational complexity than existing CNN-based lightweight models and transformer-based lightweight models with similar parameters or computational complexity. The code will be released on the site of https://github.com/dyl96/LGLDet.
Published in: IEEE Geoscience and Remote Sensing Letters ( Volume: 20)
Article Sequence Number: 6007105
Date of Publication: 06 July 2023

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