This investigation presents a digital logic accelerator (DLA) design of a neural network hardware that utilizes output reuse. The DLA is used in the detection mechanism of underwater objects that was deployed in an underwater vehicle. A modified YoloV3-tiny network was also implemented to detect more than 20 underwater objects. The proposed DLA uses processing units that have parallel architectures of output windows, and output channels. Moreover, a new Inter-Controller is designed to control the direct memory access (DMA) together with a new Reshape module to improve the performance and power efficiency. A detailed description of the design as well as the measurements on silicon are presented. The chip is realized using a typical 180-nm CMOS process. It showed a performance result of 40.96 GOPS and the power consumption is 196.8 mW. The DLA was tested to demonstrate 19.88 frames per second and 40.96 GOPS.