A No-Reference Image Quality Assessment Metric for Wood Images

Wood is extensively used for furniture, building construction and paper production [1]. There are various types of wood and each of them has different attributes with regard to its formation, thickness, color and texture [2]. These varying characteristics defines their ideal usages and economic values [3]. As the price and characteristics of every wood species differs, misclassification may cause financial losses. Hence, there is a need to identify different wood species accurately.

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