Real-Time Stereo Vision: Making More Out of Dynamic Programming
نویسندگان
چکیده
Dynamic Programming (DP) is a popular and efficient method for calculating disparity maps from stereo images. It allows for meeting real-time constraints even on low-cost hardware. Therefore, it is frequently used in real-world applications, although more accurate algorithms exist. We present a refined DP stereo processing algorithm which is based on a standard implementation. However it is more flexible and shows increased performance. In particular, we introduce the idea of multi-path backtracking to exploit the information gained from DP more effectively. We show how to automatically tune all parameters of our approach offline by an evolutionary algorithm. The performance was assessed on benchmark data. The number of incorrect disparities was reduced by 40 % compared to the DP reference implementation while the overall complexity increased only slightly.
منابع مشابه
A DSS-Based Dynamic Programming for Finding Optimal Markets Using Neural Networks and Pricing
One of the substantial challenges in marketing efforts is determining optimal markets, specifically in market segmentation. The problem is more controversial in electronic commerce and electronic marketing. Consumer behaviour is influenced by different factors and thus varies in different time periods. These dynamic impacts lead to the uncertain behaviour of consumers and therefore harden the t...
متن کاملImplementation of Symmetric Dynamic Programming Stereo Matching Algorithm Using CUDA
Stereo correspondence is a computationally intensive procedure, real-time depth map generation for high resolution video is beyond the capability of mainstream CPUs available today. Similar to many other vision algorithms, there is a high degree of parallelism available in most of the correspondence algorithms, making multiprocessor architectures as an obvious choice. Here we describe the imple...
متن کاملTowards Real-time Stereo using Non-uniform Image Sampling and Sparse Dynamic Programming
Constructing the 3D mesh of a scene from stereo images is a major task in computer vision. It usually involves several steps including stereo matching and meshing. Unfortunately, the time required to generate the 3D mesh is time demanding due to the large amount of pixels to be processed. In this work, we propose a framework to accelerate the overall process. The key issue is to first reduce th...
متن کاملAn Integrated Framework for Feature Extraction, Object Recognition and Stereo Vision with GPU support
This paper investigates the integration of feature extraction, object recognition and 3D reconstruction by stereo vision into a unified framework. In doing so, stereo vision can be made more robust by applying feature extraction results to the stereo matching process, and object recognition can be extended through the integration of depth information as another feature of the scene. In this wor...
متن کاملReconfigurable Computing Architecture for Accurate Disparity Map Calculation in Real-Time Stereo Vision
This paper presents a novel hardware architecture using FPGA-based reconfigurable computing (RC) for accurate calculation of dense disparity maps in real-time, stereo-vision systems. Recent stereo-vision hardware solutions have proposed local-area approaches. Although parallelism can be easily exploited using local methods by replicating the window-based image elaborations, accuracy is limited ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2009