The illegal dumping of aluminum and plastic into cities and marine areas leads to negative impacts on the ecosystem and contributes to increased environ-mental pollution. Although volunteer trash pickup ac-tivities have increased in recent years, they require sig-nificant effort, time, and money. Therefore, we pro -pose automated trash pickup robot, which incorpo-rates autonomous movement and trash pickup arms. Although these functions have been actively devel-oped, relatively little research has focused on trash detection. As such, we have developed a trash detec-tion function by using deep learning models to im-prove the accuracy. First, we created a new trash dataset that classifies four types of trash with high ille-gal dumping volumes (cans, plastic bottles, cardboard, and cigarette butts). Next, we developed a new you only look once (YOLO)-based model with low parame-ters and computations. We trained the model on a cre-ated dataset and a dataset consisting of marine trash created during previous research. In consequence, the proposed models achieve the same detection accuracy as the existing models on both datasets, with fewer pa-rameters and computations. Furthermore, the pro -posed models accelerate the edge device's frame rate.