Compact Video Code and Its Application to Robust Face Retrieval in TV-Series
نویسندگان
چکیده
We address the problem of video face retrieval in TV-Series which searches video clips based on the presence of specific character, given one video clip of his/hers. This is tremendously challenging because on one hand, faces in TV-Series are captured in largely uncontrolled conditions with complex appearance variations, and on the other hand retrieval task typically needs efficient representation with low time and space complexity. To handle this problem, we propose a compact and discriminative representation for the huge body of video data, named Compact Video Code (CVC). Our method first models the video clip by its sample (i.e., frame) covariance matrix to capture the video data variations in a statistical manner. To incorporate discriminative information and obtain more compact video signature, the high-dimensional covariance matrix is further encoded as a much lower-dimensional binary vector, which finally yields the proposed CVC. Specifically, each bit of the code, i.e., each dimension of the binary vector, is produced via supervised learning in a max margin framework, which aims to make a balance between the discriminability and stability of the code. Face retrieval experiments on two challenging TV-Series video databases demonstrate the competitiveness of the proposed CVC over state-of-the-art retrieval methods. In addition, as a general video matching algorithm, CVC is also evaluated in traditional video face recognition task on a standard Internet database, i.e., YouTube Celebrities, showing its quite promising performance by using an extremely compact code with only 128 bits.
منابع مشابه
Face Video Retrieval via Deep Learning of Binary Hash Representations
Retrieving faces from large mess of videos is an attractive research topic with wide range of applications. Its challenging problems are large intra-class variations, and tremendous time and space complexity. In this paper, we develop a new deep convolutional neural network (deep CNN) to learn discriminative and compact binary representations of faces for face video retrieval. The network integ...
متن کاملDeep Video Code for Efficient Face Video Retrieval
In this paper, we address the problem of face video retrieval. Given one face video of a person as query, we search the database and return the most relevant face videos, i.e., ones have same class label with the query. Such problem is of great challenge. For one thing, faces in videos have large intra-class variations. For another, it is a retrieval task which has high request on efficiency of...
متن کاملتعریف از «خود» و ساخت «دیگری»؛ مطالعه پسااستعماری سریالهای «حریم سلطان» و «الفاروق عمر»
In today’s challenging world, and so in the Middle East, TV series as the cultural products have found a extensive and effective cultural diplomacy function. Among the countries in the region, Turkey and Saudi Arabia, with TV series in various genres, have been able to stabilize their position and influence among the satellite television networks. Hence, the basic aim of this paper is to analyz...
متن کاملSemi-supervised Cast Indexing for Feature-Length Films
Cast indexing is a very important application for contentbased video browsing and retrieval, since the characters in feature-length films and TV series are always the major focus of interest to the audience. By cast indexing, we can discover the main cast list from long videos and further retrieve the characters of interest and their relevant shots for efficient browsing. This paper proposes a ...
متن کاملAutomatic textual annotation of video news based on semantic visual object extraction
In this paper, we present our work for automatic generation of textual metadata based on visual content analysis of video news. We present two methods for semantic object detection and recognition from a cross modal image-text thesaurus. These thesaurus represent a supervised association between models and semantic labels. This paper is concerned with two semantic objects: faces and Tv logos. I...
متن کامل