Visual Aerial Navigation through Adaptive Prediction and Hyper-Space Image Matching
スポンサーリンク
概要
- 論文の詳細を見る
Image matching is an important area of research in the field of artificial intelligence, machine vision and visual navigation. This paper presents a new image matching scheme suitable for visual navigation. In this scheme, gray scale images are sliced and quantized to form sub-band binary images. The information in the binary images is then signaturized to form a vector space and the signatures are sorted as per significance. These sorted signatures are then normalized to transform the represented image pictorial features in a rotation and scale invariant form. For the image matching these two vector spaces from both the images are compared in the transformed domain. This comparison yields efficient results directly in the image spatial domain avoiding the need of image inverse transformation. As compared to the conventional correlation, this comparison avoids the wide range of square error calculations all over the image. In fact, it directly guides the solution to converge towards the estimate given by the adaptive prediction for a high speed performance in an aerial video sequence. A four dimensional solution population scheme has also been presented with a matching confidence factor. This factor helps in terminating the iterations when the essential matching conditions have been achieved. The proposed scheme gives robust and fast results for normal, scaled and rotated templates. Speed comparison with older techniques shows the computational viability of this new technique and its much lesser dependence on image size. The method also shows noise immunity at 30dB AWGN and impulsive noise.
- (社)電子情報通信学会の論文
- 2009-02-01
著者
-
Qureshi Ijaz
Center Of Intelligent Systems Engineering Iiui
-
Qureshi Ijaz
Center Of Intelligent Systems Engineering
-
Qureshi Ijaz
Center Of Intelligent Systems Engineering Iiu Islamabad
-
Jalil Abdul
Center Of Intelligent Systems Engineering Iiu Islamabad
-
MANZAR Muhammad
Center of Intelligent Systems Engineering, IIU Islamabad
-
CHEEMA Tanweer
Center of Intelligent Systems Engineering, IIU Islamabad
-
Manzar Muhammad
Center Of Intelligent Systems Engineering Iiu Islamabad
-
Cheema Tanweer
Center Of Intelligent Systems Engineering Iiu Islamabad
関連論文
- Joint Channel and Data Estimation Using Particle Swarm Optimization
- Near Optimum Detector for DS-CDMA System Using Particle Swarm Optimization(Wireless Communication Technologies)
- Particle Swarm with Soft Decision for Multiuser Detection of Synchronous Multicarrier CDMA
- Multiuser Detection for Asynchronous Multicarrier CDMA Using Particle Swarm Optimization
- Visual Aerial Navigation through Adaptive Prediction and Hyper-Space Image Matching