Boosting Object Detection Accuracy: A Comparative Study of Image Augmentation Techniques

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CSTGVKC150

Accurate object detection with advanced techniques enhances training and evaluation.

Boosting Object Detection Accuracy: A Comparative Study of Image Augmentation Techniques

Aatmaj Amol Salunke
Aatmaj Amol Salunke
DOI

Abstract

This research paper presents a comparative study aimed at enhancing object detection accuracy through the utilization of image augmentation techniques. We explore the impact of four augmentation methods-Rotation, Horizontal Flip, Color Jittering and a Baseline with no augmentation-on object detection performance. Mean Average Precision (mAP) and Average Intersection over Union (IoU) are utilized as evaluation metrics. Our experiments are conducted on a comprehensive dataset, and results demonstrate that the Horizontal Flip augmentation technique consistently achieves the highest mAP and IoU scores. The findings emphasize the effectiveness of image augmentation in improving spatial alignment and detection precision. This research contributes insights into selecting the most suitable augmentation approach for optimizing object detection tasks.

Boosting Object Detection Accuracy: A Comparative Study of Image Augmentation Techniques

This research paper presents a comparative study aimed at enhancing object detection accuracy through the utilization of image augmentation techniques. We explore the impact of four augmentation methods-Rotation, Horizontal Flip, Color Jittering and a Baseline with no augmentation-on object detection performance. Mean Average Precision (mAP) and Average Intersection over Union (IoU) are utilized as evaluation metrics. Our experiments are conducted on a comprehensive dataset, and results demonstrate that the Horizontal Flip augmentation technique consistently achieves the highest mAP and IoU scores. The findings emphasize the effectiveness of image augmentation in improving spatial alignment and detection precision. This research contributes insights into selecting the most suitable augmentation approach for optimizing object detection tasks.

Aatmaj Amol Salunke
Aatmaj Amol Salunke

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Aatmaj Amol Salunke. 2026. “. Global Journal of Computer Science and Technology – F: Graphics & Vision GJCST-F Volume 23 (GJCST Volume 23 Issue F1): .

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Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

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GJCST-F Classification: (LCC): QA75.5-76.95
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Boosting Object Detection Accuracy: A Comparative Study of Image Augmentation Techniques

Aatmaj Amol Salunke
Aatmaj Amol Salunke

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