@article{doi:10.1142/S1793351X1940021X, author = {Panchi, Navid and Agrawal, Khush and Patil, Unmesh and Gujarathi, Aniket and Jain, Aman and Namdeo, Harsha and Chiddarwar, Shital S.}, title = {Deep Learning-Based Stair Segmentation and Behavioral Cloning for Autonomous Stair Climbing}, journal = {International Journal of Semantic Computing}, volume = {13}, number = {04}, pages = {497-512}, year = {2019}, doi = {10.1142/S1793351X1940021X}, URL = { https://doi.org/10.1142/S1793351X1940021X }, eprint = { https://doi.org/10.1142/S1793351X1940021X } , abstract = { Mobile robots are widely used in the surveillance industry, for military and industrial applications. In order to carry out surveillance tasks like urban search and rescue operation, the ability to traverse stairs is of immense significance. This paper presents a deep learning-based approach for semantic segmentation of stairs, behavioral cloning for stair alignment, and a novel mechanical design for an autonomous stair climbing robot. The main objective is to solve the problem of locomotion over staircases with the proposed implementation. Alignment of a robot with stairs in an image is a traditional problem, and the most recent approaches are centered around hand-crafted texture-based Gabor filters and stair detection techniques. However, we could arrive at a more scalable and robust pipeline for alignment schemes. The proposed deep learning technique eliminates the need for manual tuning of parameters of the edge detector, the Hough accumulator and PID constants. The empirical results and architecture of stair alignment pipeline are demonstrated in this paper. } }