Consistent Foreground Co-segmentation
نویسندگان
چکیده
When the foreground objects have variegated appearance and/or manifest articulated motion, not to mention the momentary occlusions by other unintended objects, a segmentation method based on single video and a bottom-up approach is often insufficient for their extraction. In this paper, we present a video co-segmentation method to address the aforementioned challenges. Departing from the objectness attributes and motion coherence used by traditional figure-ground separation methods, we place central importance in the role of “common fate”, that is, the different parts of the foreground should persist together in all the videos. To accomplish this idea, we first extract seed superpixels by a motion-based figure/ground segmentation method. We then formulate a set of linkage constraints between these superpixels based on whether they exhibit the characteristics of common fate or not. An iterative constrained clustering algorithm is then proposed to trim away the incorrect and accidental linkage relationships. The clustering algorithm also perform automatic model selection to estimate the number of individual objects in the foreground (e.g. male and female birds in courtship), while at the same time binding the parts of a variegated object together in a unified whole. Finally, a multiclass Markov random fields labeling is used to obtain a refined segmentation result. Our experimental results on two datasets show that our method successfully addresses the challenges in the extraction of complex foreground and outperforms the state-of-the-art video segmentation and co-segmentation methods.
منابع مشابه
Usability of Cluster Based Co-Saliency in Video Foreground Detection
Ability of human visual system to detect prominent regions in an image is fast, reliable and efficient. Computational modeling of this extraordinary behavior is termed as saliency detection. Saliency detection identifies salient regions in an image and is relevant in many computer vision applications such as object recognition, image segmentation, image retrieval etc. The term co-saliency can b...
متن کاملTriCoS: A Tri-level Class-Discriminative Co-segmentation Method for Image Classification
The aim of this paper is to leverage foreground segmentation to improve classification performance on weakly annotated datasets – those with no additional annotation other than class labels. We introduce TriCoS, a new co-segmentation algorithm that looks at all training images jointly and automatically segments out the most class-discriminative foregrounds for each image. Ultimately, those fore...
متن کاملEfficient Co-segmentation of Image Using Higher Order Clique
A new interactive image co segmentation algorithm using possibility estimation and higher order energy is proposed for extracting general foreground objects from a group of interrelated images. Our approach introduces the higher order cliques, energy into the co segmentation optimization process successfully. A region based likelihood estimation procedure is first performed to provide the prima...
متن کاملEnhancement of Learning Based Image Matting Method with Different Background/Foreground Weights
The problem of accurate foreground estimation in images is called Image Matting. In image matting methods, a map is used as learning data, which is produced by those pixels that are definitely foreground, definitely background ,and unknown. This three-level pixel map is often referred to as a trimap, which is produced manually in alpha matte datasets. The true class of unknown pixels will be es...
متن کاملThermal imaging for enhanced foreground background segmentation
Foreground background segmentation is the primary step of most automated video monitoring system aiming at object tracking, event detection or scene interpretation. In uncontrolled environments, with dynamic background and lighting changes, this basic task is very challenging. This work is based on the hypothesis that the combination of LWIR (8-12 m) and colour cameras can significantly impr...
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 2014