航空图像拼接特征描述符的性能评价

Rumana Aktar, H. Aliakbarpour, F. Bunyak, G. Seetharaman, K. Palaniappan
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引用次数: 8

摘要

拼接技术可以有效地总结航拍视频中的地理空间内容,并应用于监视、活动检测、跟踪等领域。场景杂乱、干扰物、视差、照明伪影(即阴影、眩光)和其他航空成像的复杂性(如大摄像机运动)使注册过程具有挑战性。为了克服这些挑战,需要在注册前进行稳健的特征检测和描述。本研究在VIRAT基准航拍视频的视频拼接和总结(VMZ)框架中,研究了选定的特征检测器(如带NCC的结构张量(ST+NCC)、SURF、ASIFT)的计算复杂度与性能。ST+NCC和SURF速度非常快,但对于来自VIRAT的少数复杂图像(有遮挡)则失败。ASIFT比ST+NCC或SURF更强大,尽管非常耗时。我们还提出了一种自适应描述符(结合ST+NCC和ASIFT),它比ASIFT快9倍,具有相当的鲁棒性。
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Performance Evaluation of Feature Descriptors for Aerial Imagery Mosaicking
Mosaicking enables efficient summary of geospatial content in an aerial video with applications in surveillance, activity detection, tracking, etc. Scene clutter, presence of distractors, parallax, illumination artifacts i.e. shadows, glare, and other complexities of aerial imaging such as large camera motion makes the registration process challenging. Robust feature detection and description is needed to overcome these challenges before registration. This study investigates the computational complexity versus performance of selected feature detectors such as Structure Tensor with NCC (ST+NCC), SURF, ASIFT within our Video Mosaicking and Summarization (VMZ) framework on VIRAT benchmark aerial video. ST+NCC and SURF is very fast but fails for few complex imagery (with occlusion) from VIRAT. ASIFT is more robust compared to ST+NCC or SURF, though extremely time consuming. We also propose an Adaptive Descriptor (combining ST+NCC and ASIFT) that is 9x faster than ASIFT with comparable robustness.
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