In this paper we extend the recently proposed DCT-mod2 feature extraction technique (which utilizes polynomial coefficients derived from 2D DCT coefficients obtained from horizontally
& vertically neighbouring blocks) via the use of various windows and diagonally neighbouring blocks. We also propose enhanced PCA, where traditional PCA feature extraction is combined with DCT-mod2. Results using test images corrupted by a linear and a non-linear illumination change, white Gaussian noise and compression
artefacts, show that use of diagonally neighbouring blocks and windowing is detrimental to robustness against illumination
changes while being useful for increasing robustness against white noise and compression artefacts. We also show that the
enhanced
PCA technique retains all the positive aspects of traditional PCA (that is, robustness against white noise and compression artefacts)
while also being robust to illumination changes; moreover, enhanced PCA outperforms PCA with histogram equalisation pre-processing.
The authors thank the Swiss National Science Foundation for supporting this work through the National Centre of Competence
in Research (NCCR) on Interactive Multimodal Information Management (IM2).