Adaptive weighted moving shadow detection based on multiple features
Abstract
Moving object detection is a fundamental task for automatic systems in video surveillance scenes, whose performance is downgraded by moving shadows unfortunately since moving objects and their shadows tend to present similar motion patterns and most moving object detection methods confused them frequently. To deal with this problem, we propose an adaptive weighted moving shadow detection method based on multiple features. In the proposed method, intensity, color and texture properties with neighboring information are exploited to generate feature maps, which are utilized to detect moving shadows respectively in small random selected videos to determine the weight for each feature map. Subsequently, the adaptive weighted fusion strategy is applied to fusion these feature maps for shadow detection according to the empirical threshold. At last, a series of spatial adjustment operations are implemented to correct misclassified pixels for obtaining refined detection results. By analyzing extensive experimental and comparison results, it demonstrates that the effectiveness and robustness of the proposed method for different video scenes and the superiority than some state-of-the-art methods.
Full Text:
PDFReferences
Al-Najdawi N., Bez H.E., Singhai J., Edirisinghe E.A.(2012). A survey of cast shadow detection algorithms, Pattern Recognition Letters, 33(6),752-764.
Choi J.M., Yoo Y.J., Choi J.Y. (2010). Adaptive shadow estimator for removing shadow of moving object, Computer Vision and Image Understanding, 114(9), 1017-1029.
Cucchiara R., Grana C., Piccardi M., Prati. A. (2003). Detecting moving objects, ghosts, and shadows in video streams, IEEE transactions on pattern analysis and machine intelligence, 25(10), 1337-1342.
Dai J.Y., Qi M., Wang J.Z., Dai J.K., Kong J. (2013). Robust and accurate moving shadow detection based on multiple features fusion, Optics & Laser Technology, 54, 232-241.
Fang L.Z., Qiong W.Y., Sheng Y.Z. (2008).A method to segment moving vehicle cast shadow based on wavelet transform, Pattern Recognition Letters, 29(16), 2182-2188.
Gevers T., Smeulders A.W.M. (1999). Color-based object recognition, Pattern Recognition, 32(3), 453-464.
Heikkila M., Pietikainen M. (2006). A texture-based method for modeling the background and detecting moving objects, IEEE Transactions on Pattern Analysis and Machine Intelligence, 28(4), 657-662.
Horprasert T., Harwood D., Davis L.S. (1999).A statistical approach for real-time robust background subtraction and shadow detection, in: IEEE ICCV’99 Frame-Rate Workshop, 99, 1-19.
Hsieh J.W., Hu W.F., Chang C.J., Chen Y.S.(2003). Shadow elimination for effective moving object detection by Gaussian shadow modeling, Image and Vision Computing,21(6), 505-516.
Huerta I., Holte M.B., Moeslund T.B., Gonzalez J.(2015). Chromatic shadow detection and tracking for moving foreground segmentation, Image and Vision Computing, 41, 42-53.
Itti L., Koch C., Niebur E. (1998). A model of saliency-based visual attention for rapid scene analysis, IEEE Transactions on Pattern Analysis and Machine Intelligence, 20(11), 1254-1259.
Jacques J.C.S, Jung C.R., Musse S.R. (2005). Background subtraction and shadow detection in grayscale video sequences, in: 18th Brazilian Symposium on Computer Graphics and Image Processing, 189-196.
Kar A., Deb K. (2015).Moving cast shadow detection and removal from Video based on HSV color space, in:2015 International Conference on Electrical Engineering and Information Communication Technology (ICEEICT), 1-6.
Leone A., Distante C. (2007).Shadow detection for moving objects based on texture analysis, Pattern Recognition, 40(4), 1222-1233.
Nishita T., Okamura I., Nakamae E. (1985). Shading models for point and linear sources, ACM Transactions on Graphics (TOG), 4(2), 124-146.
Salvador E., Cavallaro A., EbrahimiT. (2004). Cast shadow segmentation using invariant color features, Computer vision and image understanding, 95(2), 238-259.
Sanin A., Sanderson C., Lovell B.C. (2010). Improved shadow removal for robust person tracking in surveillance scenarios, in: 2010 20th International Conference on Pattern Recognition,141-144.
Song K.T., Tai J.C. (2007). Image-based traffic monitoring with shadow suppression, in: Proceedings of the IEEE, 95(2), 413-426.
Stauffer C., Grimson W.E.L. (1999). Adaptive background mixture models for real-time tracking, in: IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 2.
Sun B., Li S. (2010).Moving cast shadow detection of vehicle using combined color models, in: Chinese Conference on Pattern Recognition, 1-5.
Tiwari A., Singh P.K., Amin S. (2016). A survey on Shadow Detection and Removal in images and video sequences, in: 2016 6th International Conference on Cloud System and Big Data Engineering (Confluence),518-523.
Wang B.S., Zhu W.Q., Zhao Y., Zhang Y.J. (2015).Moving Cast Shadow Detection Using Joint Color and Texture Features with Neighboring Information, Pacific-Rim Symposium on Image and Video Technology, 15-25.
Xu D., Li X., Liu Z. (2005).Cast shadow detection in video segmentation, Pattern Recognition Letters, 26(1), 91-99.
Zhang W., Fang X.Z., Yang X. K., Wu Q.M.J.(2007). Moving cast shadows detection using ratio edge, IEEE Transactions on Multimedia, 9(6), 1202-1214.
Refbacks
- There are currently no refbacks.

Revista de la Facultad de Ingeniería,
ISSN: 2443-4477; ISSN-L:0798-4065
Edif. del Decanato de la Facultad de Ingeniería,
3º piso, Ciudad Universitaria,
Apartado 50.361, Caracas 1050-A,
Venezuela.
© Universidad Central de Venezuela