Many studies have shown that gait can be deployed as a biometric. Few of these have addressed the effects of view-point and
covariate factors on the recognition process. We describe the first analysis which combines view-point invariance for gait
recognition which is based on a model-based pose estimation approach from a single un-calibrated camera. A set of experiments
are carried out to explore how such factors including clothing, carrying conditions and view-point can affect the identification
process using gait. Based on a covariate-based probe dataset of over 270 samples, a recognition rate of 73.4% is achieved
using the KNN classifier. This confirms that people identification using dynamic gait features is still perceivable with better recognition
rate even under the different covariate factors. As such, this is an important step in translating research from the laboratory
to a surveillance environment.