This document proposes an object detection technique for aerial videos based on motion vector compensation and statistical analysis. It begins with an introduction to the importance of object detection in aerial surveillance. It then describes the characteristics of aerial videos and discusses how motion vectors can be used for detection. The technique involves preprocessing the video via wavelet denoising, compensating motion vectors estimated from frame differences using a global motion vector, and performing statistical analysis and clustering on the compensated motion vectors to detect and segment objects. Experimental results demonstrate that the technique can successfully detect objects in aerial videos by distinguishing object motion from background motion.