Steganography is the science that involves communicating secret data in an appropriate multimedia carrier, e.g., image, audio, and video files. It comes under the assumption that if the feature is visible, the point of attack is evident, thus the goal here is always to conceal the very existence of the embedded data. Steganography has various useful applications. However, like any other science it can be used for ill intentions. It has been propelled to the forefront of current security techniques by the remarkable growth in computational power, the increase in security awareness by, e.g., individuals, groups, agencies, government and through intellectual pursuit. Steganography's ultimate objectives, which are undetectability, robustness (resistance to various image processing methods and compression) and capacity of the hidden data, are the main factors that separate it from related techniques such as watermarking and cryptography. This paper provides a state-of-the-art review and analysis of the different existing methods of steganography along with some common standards and guidelines drawn from the literature. This paper concludes with some recommendations and advocates for the object-oriented embedding mechanism. Steganalysis, which is the science of attacking steganography, is not the focus of this survey but nonetheless will be briefly discussed.
Wearable sensor technology has gradually extended its usability into a wide range of well-known applications. Wearable sensors can typically assess and quantify the wearer’s physiology and are commonly employed for human activity detection and quantified self-assessment. Wearable sensors are increasingly utilised to monitor patient health, rapidly assist with disease diagnosis, and help predict and often improve patient outcomes. Clinicians use various self-report questionnaires and well-known tests to report patient symptoms and assess their functional ability. These assessments are time consuming and costly and depend on subjective patient recall. Moreover, measurements may not accurately demonstrate the patient’s functional ability whilst at home. Wearable sensors can be used to detect and quantify specific movements in different applications. The volume of data collected by wearable sensors during long-term assessment of ambulatory movement can become immense in tuple size. This paper discusses current techniques used to track and record various human body movements, as well as techniques used to measure activity and sleep from long-term data collected by wearable technology devices.
A reliable human skin detection method that is adaptable to different human
skin colours and illu- mination conditions is essential for better human skin
segmentation. Even though different human skin colour detection solutions have
been successfully applied, they are prone to false skin detection and are not
able to cope with the variety of human skin colours across different ethnic.
Moreover, existing methods require high computational cost. In this paper, we
propose a novel human skin de- tection approach that combines a smoothed 2D
histogram and Gaussian model, for automatic human skin detection in colour
image(s). In our approach an eye detector is used to refine the skin model for
a specific person. The proposed approach reduces computational costs as no
training is required; and it improves the accuracy of skin detection despite
wide variation in ethnicity and illumination. To the best of our knowledge,
this is the first method to employ fusion strategy for this purpose.
Qualitative and quantitative results on three standard public datasets and a
comparison with state-of-the-art methods have shown the effectiveness and
robustness of the proposed approach.Comment: Accepted in IEEE Transactions on Industrial Informatics, vol. 8(1),
pp. 138-147, new skin detection + ground truth (Pratheepan) datase
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