DocumentCode
157977
Title
Im2depth: Scalable exemplar based depth transfer
Author
Baig, Mohammad Haris ; Jagadeesh, Vignesh ; Piramuthu, Robinson ; Bhardwaj, Arpit ; Wei Di ; Sundaresan, Neel
Author_Institution
Dartmouth Coll., Hanover, NH, USA
fYear
2014
fDate
24-26 March 2014
Firstpage
145
Lastpage
152
Abstract
The rapid increase in number of high quality mobile cameras have opened up an array of new problems in mobile vision. Mobile cameras are predominantly monocular and are devoid of any sense of depth, making them heavily reliant on 2D image processing. Understanding 3D structure of scenes being imaged can greatly improve the performance of existing vision/graphics techniques. In this regard, recent availability of large scale RGB-D datasets beg for more effective data driven strategies to leverage the scale of data. We propose a depth recovery mechanism “im2depth”, that is lightweight enough to run on mobile platforms, while leveraging the large scale nature of modern RGB-D datasets. Our key observation is to form a basis (dictionary) over the RGB and depth spaces, and represent depth maps by a sparse linear combination of weights over dictionary elements. Subsequently, a prediction function is estimated between weight vectors in RGB to depth space to recover depth maps from query images. A final superpixel post processor aligns depth maps with occlusion boundaries, creating physically plausible results. We conclude with thorough experimentation with four state of the art depth recovery algorithms, and observe an improvement of over 6.5 percent in shape recovery, and over 10cm reduction in average L1 error.
Keywords
cameras; computer vision; 2D image processing; 3D scene structure; Im2depth; RGB-D datasets; average L1 error; data driven strategy; depth maps; depth recovery algorithms; depth recovery mechanism; depth space; depth spaces; high quality mobile cameras; mobile platforms; mobile vision; over dictionary elements; prediction function; query images; scalable exemplar based depth transfer; shape recovery; sparse linear weight combination; superpixel post processor; vision-graphics techniques; weight vectors; Abstracts; Accuracy;
fLanguage
English
Publisher
ieee
Conference_Titel
Applications of Computer Vision (WACV), 2014 IEEE Winter Conference on
Conference_Location
Steamboat Springs, CO
Type
conf
DOI
10.1109/WACV.2014.6836091
Filename
6836091
Link To Document