The few-view image reconstruction problem is one of the challenging research areas in industrial Computed Tomography(CT). On the one hand, acquiring enough data for reconstruction leads to a longer scanning time, which may not be applicable in industrial CT. On the other hand, reconstructing under-sampled data leads to artifacts and inaccurate image analysis. To get a usable reconstruction for image analysis, from the insufficient data caused by quick cone beam CT scans, we use a Total Variation (TV) regularized optimization problem. A split Bregman implementation is used to solve the TV regularized CT reconstruction problem. To evaluate the quality of the few-view reconstruction produced by the split Bregman, we perform gray value analysis...