Overcoming Scene Context Constraints for Object Detection in wild using Defilters
- URL: http://arxiv.org/abs/2404.08293v1
- Date: Fri, 12 Apr 2024 07:30:52 GMT
- Title: Overcoming Scene Context Constraints for Object Detection in wild using Defilters
- Authors: Vamshi Krishna Kancharla, Neelam sinha,
- Abstract summary: High-level computer vision tasks such as object detection, recognition, and segmentation are particularly sensitive to image distortion.
We propose an image defilter to rectify image distortion prior to object detection.
This method enhances object detection accuracy, as models perform optimally when trained on non-distorted images.
- Score: 3.038642416291856
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper focuses on improving object detection performance by addressing the issue of image distortions, commonly encountered in uncontrolled acquisition environments. High-level computer vision tasks such as object detection, recognition, and segmentation are particularly sensitive to image distortion. To address this issue, we propose a novel approach employing an image defilter to rectify image distortion prior to object detection. This method enhances object detection accuracy, as models perform optimally when trained on non-distorted images. Our experiments demonstrate that utilizing defiltered images significantly improves mean average precision compared to training object detection models on distorted images. Consequently, our proposed method offers considerable benefits for real-world applications plagued by image distortion. To our knowledge, the contribution lies in employing distortion-removal paradigm for object detection on images captured in natural settings. We achieved an improvement of 0.562 and 0.564 of mean Average precision on validation and test data.
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