Abstract

Object detection is a vital step in satellite imagery-based computer vision applications such as precision agriculture, urban planning and defense applications. In satellite imagery, object detection is a very complicated task due to various reasons including low pixel resolution of objects and detection of small objects in the large scale (a single satellite image taken by Digital Globe comprises over 240 million pixels) satellite images. Object detection in satellite images has many challenges such as class variations, multiple objects pose, high variance in object size, illumination and a dense background. This study aims to compare the performance of existing deep learning algorithms for object detection in satellite imagery. We created the dataset of satellite imagery to perform object detection using convolutional neural network-based frameworks such as faster RCNN (faster region-based convolutional neural network), YOLO (you only look once), SSD (single-shot detector) and SIMRDWN (satellite imagery multiscale rapid detection with windowed networks). In addition to that, we also performed an analysis of these approaches in terms of accuracy and speed using the developed dataset of satellite imagery. The results showed that SIMRDWN has an accuracy of 97% on high-resolution images, while Faster RCNN has an accuracy of 95.31% on the standard resolution (1000 × 600). YOLOv3 has an accuracy of 94.20% on standard resolution (416 × 416) while on the other hand SSD has an accuracy of 84.61% on standard resolution (300 × 300). When it comes to speed and efficiency, YOLO is the obvious leader. In real-time surveillance, SIMRDWN fails. When YOLO takes 170 to 190 milliseconds to perform a task, SIMRDWN takes 5 to 103 milliseconds.

Highlights

  • Introduction iationsArtificial intelligence (AI) is the field of computer science that aims to make machines intelligent

  • AI covers a wide range of areas that mainly corresponds to human senses such as computer vision (CV), natural language processing (NLP) and controls and robotics

  • We studied from the literature review and found researchers used vehicles for detection using YOLO and SIMRDWN

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Summary

Introduction

Artificial intelligence (AI) is the field of computer science that aims to make machines intelligent. Such machines ideally respond like humans and in perceiving, understanding, and making decisions to solve problems [1,2,3]. Computer vision is an area of computer science that tends to mimic human vision capabilities by understanding digital images and videos [4,5,6,7]. It uses various algorithms and optimization techniques to analyze images.

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