Efficient 3D Instance Segmentation for Archaeological Sites Using 2D Object Detection and Tracking

Maad kamal Al-anni, Pierre Drap
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Abstract

: This paper introduces an e ffi cient method for 3D instance segmentation based on 2D object detection, applied to the photogrammetric survey images of archaeological sites. The method capitalizes on the relationship between the 3D model and the set of 2D images utilized to compute it. 2D detections on the images are projected and transformed into a 3D instance segmentation, thus identifying unique objects within the scene. The primary contribution of this work is the development of a semi-automatic image annotation method, augmented by an object tracking technique that leverages the temporal continuity of image sequences. Additionally, a novel ad-hoc evaluation process has been integrated into the conventional annotation-training-testing cycle to determine the necessity of additional annotations. This process tests the consistency of the 3D objects yielded by the 2D detection. The e ffi cacy of the proposed method has been validated on the underwater site of Xlendi in Malta, resulting in complete and accurate 3D instance segmentation. Compared to traditional methods, the object tracking approach adopted has facilitated a 90% reduction in the need for manual annotations, The approach streamlines precise 3D detection, establishing a robust foundation for comprehensive 3D instance segmentation. This enhancement enriches the 3D survey, providing profound insights and facilitating seamless exploration of the Xlendi site from an archaeological perspective.
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利用二维物体检测和跟踪技术为考古遗址进行高效的三维实例分割
:本文介绍了一种基于二维物体检测的高效三维实例分割方法,该方法适用于考古遗址的摄影测量图像。该方法利用了三维模型与用于计算模型的二维图像集之间的关系。图像上的二维检测被投射和转换为三维实例分割,从而识别出场景中的独特物体。这项工作的主要贡献在于开发了一种半自动图像标注方法,并利用图像序列的时间连续性开发了一种物体跟踪技术。此外,还在传统的注释-培训-测试循环中集成了一个新颖的临时评估流程,以确定是否有必要进行额外注释。该流程测试二维检测所生成的三维对象的一致性。在马耳他的 Xlendi 水下遗址上验证了建议方法的有效性,从而获得了完整准确的三维实例分割。与传统方法相比,所采用的物体跟踪方法减少了 90% 的人工标注需求,简化了精确的三维检测,为全面的三维实例分割奠定了坚实的基础。这一改进丰富了三维勘测,提供了深刻的见解,有助于从考古学角度对 Xlendi 遗址进行无缝探索。
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来源期刊
International Journal of Computing and Digital Systems
International Journal of Computing and Digital Systems Business, Management and Accounting-Management of Technology and Innovation
CiteScore
1.70
自引率
0.00%
发文量
111
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