Odysseas Kechagias-Stamatis
Cranfield University
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Odysseas Kechagias-Stamatis.
international conference on robotics and automation | 2016
Odysseas Kechagias-Stamatis; Nabil Aouf
3D object recognition is proven superior compared to its 2D counterpart with numerous implementations, making it a current research topic. Local based proposals specifically, although being quite accurate, they limit their performance on the stability of their local reference frame or axis (LRF/A) on which the descriptors are defined. Additionally, extra processing time is demanded to estimate the LRF for each local patch. We propose a 3D descriptor which overrides the necessity of a LRF/A reducing dramatically processing time needed. In addition robustness to high levels of noise and non-uniform subsampling is achieved. Our approach, namely Histogram of Distances is based on multiple L2-norm metrics of local patches providing a simple and fast to compute descriptor suitable for time-critical applications. Evaluation on both high and low quality popular point clouds showed its promising performance.
IEEE Transactions on Aerospace and Electronic Systems | 2016
Odysseas Kechagias-Stamatis; Nabil Aouf; Mark A. Richardson
We present a real-time three-dimensional automatic target recognition approach appropriate for future light detection and ranging–based missiles. Our technique extends the speeded-up robust features method into the third dimension by solving multiple two-dimensional problems and performs template matching based on the extreme case of a single pose per target. Evaluation on military targets shows higher recognition rates under various transformations and perturbations at lower processing time compared to state-of-the-art approaches.
The Imaging Science Journal | 2017
Odysseas Kechagias-Stamatis; Nabil Aouf
ABSTRACT Future light detection and ranging seeker missiles incorporating 3D automatic target recognition (ATR) capabilities can improve the missile’s effectiveness in complex battlefield environments. Considering the progress of local 3D descriptors in the computer vision domain, this paper evaluates a number of these on highly credible simulated air-to-ground missile engagement scenarios. The latter take into account numerous parameters that have not been investigated yet by the literature including variable missile – target range, 6-degrees-of-freedom missile motion and atmospheric disturbances. Additionally, the evaluation process utilizes our suggested 3D ATR architecture that compared to current pipelines involves more post-processing layers aiming at further enhancing 3D ATR performance. Our trials reveal that computer vision algorithms are appealing for missile-oriented 3D ATR.
Target and Background Signatures III | 2017
Odysseas Kechagias-Stamatis; Nabil Aouf; Carole Belloni; David Nam
Firearms currently pose a known risk at the borders. The enormous number of X-ray images from parcels, luggage and freight coming into each country via rail, aviation and maritime presents a continual challenge to screening officers. To further improve UK capability and aid officers in their search for firearms we suggest an automated object segmentation and clustering architecture to focus officers’ attentions to high-risk threat objects. Our proposal utilizes dual-view single/ dual-energy 2D X-ray imagery and is a blend of radiology, image processing and computer vision concepts. It consists of a triple-layered processing scheme that supports segmenting the luggage contents based on the effective atomic number of each object, which is then followed by a dual-layered clustering procedure. The latter comprises of mild and a hard clustering phase. The former is based on a number of morphological operations obtained from the image-processing domain and aims at disjoining mild-connected objects and to filter noise. The hard clustering phase exploits local feature matching techniques obtained from the computer vision domain, aiming at sub-clustering the clusters obtained from the mild clustering stage. Evaluation on highly challenging single and dual-energy X-ray imagery reveals the architecture’s promising performance.
international conference on networking sensing and control | 2017
Zygfryd Wieszok; Nabil Aouf; Odysseas Kechagias-Stamatis; Lounis Chermak
We propose a stereo vision based obstacle detection and scene segmentation algorithm appropriate for autonomous vehicles. Our algorithm is based on an innovative extension of the Stixel world, which neglects computing a disparity map. Ground plane and stixel distance estimation is improved by exploiting an online learned color model. Furthermore, the stixel height estimation is leveraged by an innovative joined membership scheme based on color and disparity information. Stixels are then used as an input for the semantic scene segmentation providing scene understanding, which can be further used as a comprehensive middle level representation for high-level object detectors.
international conference on networking sensing and control | 2017
Odysseas Kechagias-Stamatis; Nabil Aouf; Lounis Chermak
3D object recognition and registration in computer vision applications has lately drawn much attention as it is capable of superior performance compared to its 2D counterpart. Although a number of high performing solutions do exist, it is still challenging to further reduce processing time and memory requirements to meet the needs of time critical applications. In this paper we propose an extension of the 3D descriptor Histogram of Distances (HoD) into the binary domain named the Binary-HoD (B-HoD). Our binary quantization procedure along with the proposed preprocessing step reduce an order of magnitude both processing time and memory requirements compared to current state of the art 3D descriptors. Evaluation on two popular low quality datasets shows its promising performance.
IEEE Transactions on Cognitive and Developmental Systems | 2018
Hamid Isakhani; Nabil Aouf; Odysseas Kechagias-Stamatis; James F. Whidborne
IEEE Transactions on Aerospace and Electronic Systems | 2018
Odysseas Kechagias-Stamatis; Nabil Aouf
Aerospace Science and Technology | 2018
Odysseas Kechagias-Stamatis; Nabil Aouf; Greer J. Gray; Lounis Chermak; Mark A. Richardson; F. Oudyi
2017 Sensor Signal Processing for Defence Conference (SSPD) | 2017
Odysseas Kechagias-Stamatis; Nabil Aouf; David Nam