Litcius/Paper detail

Oriented object detection in satellite images using convolutional neural network based on ResNeXt

Asep Haryono, Grafika Jati, Wisnu Jatmiko

2023ETRI Journal15 citationsDOIOpen Access PDF

Abstract

Abstract Most object detection methods use a horizontal bounding box that causes problems between adjacent objects with arbitrary directions, resulting in misaligned detection. Hence, the horizontal anchor should be replaced by a rotating anchor to determine oriented bounding boxes. A two‐stage process of delineating a horizontal bounding box and then converting it into an oriented bounding box is inefficient. To improve detection, a box‐boundary‐aware vector can be estimated based on a convolutional neural network. Specifically, we propose a ResNeXt101 encoder to overcome the weaknesses of the conventional ResNet, which is less effective as the network depth and complexity increase. Owing to the cardinality of using a homogeneous design and multibranch architecture with few hyperparameters, ResNeXt captures better information than ResNet. Experimental results demonstrate more accurate and faster oriented object detection of our proposal compared with a baseline, achieving a mean average precision of 89.41% and inference rate of 23.67 fps.

Topics & Concepts

Minimum bounding boxConvolutional neural networkComputer scienceObject detectionBounding overwatchArtificial intelligenceInferenceBoundary (topology)HyperparameterPattern recognition (psychology)AlgorithmMathematicsImage (mathematics)Mathematical analysisAdvanced Neural Network ApplicationsAdvanced Image and Video Retrieval TechniquesRemote-Sensing Image Classification